Group activity selection problem with approval preferences
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Abstract
We consider a setting where one has to organize one or several group activities for a set of agents. Each agent will participate in at most one activity, and her preferences over activities depend on the number of participants in the activity. The goal is to assign agents to activities based on their preferences in a way that is socially optimal and/or stable. We put forward a general model for this setting, which is a natural generalization of anonymous hedonic games. We then focus on a special case of our model where agents’ preferences are binary, i.e., each agent classifies all pairs of the form ‘(activity, group size)’ into ones that are acceptable and ones that are not. We formulate several solution concepts for this scenario, and study them from the computational point of view, providing hardness results for the general case as well as efficient algorithms for settings where agents’ preferences satisfy certain natural constraints.
Keywords
Hedonic games GASP Complexity Approval preferences1 Introduction
There are many reallife situations where a group of agents is faced with a choice of multiple activities, the members of the group have differing preferences over these activities, and it is feasible for the group to split into smaller subgroups, so that each subgroup can pursue its own activity. Consider, for instance, a company which, as a service to its employees, wants to provide free sports classes, and allows each employee to take at most one class (Skowron et al. 2015). Another example would be a workshop whose organizers would like to arrange one or more social activities for the free afternoon.^{1} The available activities include a hike, a bus trip, and a table tennis competition. As they will take place simultaneously, each attendee can select at most one activity (or choose not to participate). If the preferences for activities do not depend on the number of participants and there are no constraints on the number of participants for each activity, then one can simply elicit the attendees’ preferences over the activities, and assign each of them to their favorite activity. However, the situation becomes more complicated if one’s preferences may depend on the number of other attendees who choose the same activity. For instance, the bus trip has a fixed transportation cost that has to be shared equally among its participants (while more complex costsharing schemes are possible, participants may view them as unfair), which implies that, typically, an attendee i is only willing to go on the bus trip if the number of other participants of the bus trip exceeds a threshold \(\ell _i\). Similarly, i may only be willing to play table tennis if the number of attendees who signed up for the tournament does not exceed a threshold \(u_i\): as there is only one table, the more participants, the less time each individual spends playing.
Neglecting to take the number of participants of each activity into account may lead to highly undesirable outcomes, such as a bus that is shared by two persons, each of them paying a high cost, and a 48participant table tennis tournament with one table. Adding constraints on the number of participants for each activity is a practical, but imperfect solution, as the agents’ preferences over group sizes may differ: while some attendees (say, senior faculty) may be willing to go on the bus trip with just 4–5 other participants, others (say, graduate students) cannot afford it unless the number of participants exceeds 10. Thus, in this paper, we will focus on a more finegrained approach: eliciting the agents’ preferences over pairs of the form ‘(activity, group size)’ (together with the option ‘do nothing’, which we refer to as the void activity), rather than over activities themselves, and allocating agents to activities based on this information.
Our goal is to formalize and study the problem of finding a good assignment of agents to activities based on agents’ preferences over pairs of the form ‘(activity, group size)’, which we will refer to as the Group Activity Selection Problem (\(\mathsf{GASP}\)). We aim to put forward a model for this problem that is expressive enough to capture many reallife activity selection scenarios, yet simple enough to admit efficient procedures for finding good assignments of agents to activities. Due to our choice of motivating applications, we assume that the central authority knows (or, rather, can reliably elicit) the agents’ true preferences, and its goal is to find an assignment of players to activities that, informally speaking, is stable and/or maximizes the overall satisfaction. We describe the basic structure of the problem, and discuss plausible constraints on the number and type of available activities and the structure of agents’ preferences. We adapt various notions of stability from the hedonic games literature (such as Nash stability, individual stability and core stability) to our setting. We then focus on a simple preference model, where agents’ preferences are trichotomous: each agent identifies a set of alternatives that he prefers to the void activity and a set of alternatives that he likes less than the void activity, and is indifferent among the alternatives in each set. For this simplified model, we briefly discuss the relationships among the solution concepts we define, and then focus on the algorithmic problem of finding a ‘good’ (socially optimal and/or stable) outcome. We show that, in general, the associated computational problems are NPhard, but identify a number of interesting special cases that admit efficient exact or approximate algorithms.
We do not aim to provide a complete analysis of the group activity selection problem; rather, we view our work as a first step towards understanding the algorithmic and incentive issues that arise in this setting. We hope that our paper will lead to future research on this topic; to facilitate this, throughout the paper we highlight several possible extensions of our model as well as list some problems left open by our work.
1.1 Related work
The model considered in this paper is closely related to that of anonymous hedonic games (Banerjee et al. 2001), where, just as in our setting, players have to split into groups and each player has preferences over possible group sizes. The main difference between anonymous hedonic games and our problem is that, in our setting, the agents’ preferences depend not only on the group size, but also on the activity that has been allocated to their group; thus, our model can be seen as a generalization of anonymous hedonic games. We remark that we can represent our problem as a general (i.e., nonanonymous) hedonic game (Banerjee et al. 2001; Bogomolnaia and Jackson 2002), by creating a dummy agent for each activity and endowing it with suitable preferences (see Sect. 2.2 for details). However, our setting has useful structural properties that distinguish it from a generic hedonic game: for instance, it allows for succinct representation of players’ preferences, and, as we will see, has several natural special cases that admit efficient algorithms for finding good outcomes.
Our setting also has some similarities to those of congestion games (Vöcking 2006) and costsharing games (Jain and Mahdian 2007). Indeed, in such games agents also have preferences over the number of other agents they share resources with: specifically, in congestion games an agent’s utility decreases with the number of agents who chose the same resource, and in costsharing games sharing the resource with a larger number of other agents lowers the cost. Our model differs from both of these settings in two important aspects: on the one hand, we do not require all activities to be of the same ‘type’ (i.e., some activities may behave as resources in congestion games, while others may behave as resources in costsharing games), and, on the other hand, we assume that agents’ preferences are ordinal (and, in most of the paper, binary) rather than numeric.
Some recent proposals are also related to our model. Lee and Shoham (2015) investigate the anonymous stable invitation problem, where the goal is to find a set of agents to be invited to an event, given agents’ preferences over the number of invitees. This problem corresponds to the special case of \(\mathsf{GASP}\) with only one nonvoid activity. Lee and Shoham focus on proving impossibility and possibility results concerning strategyproofness; they give a very simple strategyproof mechanism that finds a maximum stable invitation in the case of increasing preferences. They also consider a more general, nonanonymous version of the problem. Spradling et al. (2013) consider hedonic games with roles and teams, where agents have preferences over pairs consisting of a role (that they will play in their coalition) and the composition of roles that make up the coalition. Similarly to our setting, in this model agents have preferences over both coalitions and actions; however, in the model of Spradling et al. actions are associated with individual players rather than the coalition as a whole. Lu and Boutilier (2012) discuss a model of cooperative group buying, which can be embedded into \(\mathsf{GASP}\) (more specifically, \(\mathsf{GASP}\) with decreasing preferences, see Sect. 2). This model has a set of buyers and a set of items with volume discounts. Each buyer ranks all pairs \((j,p_j)\), where j is an item and \(p_j\) is a possible discounted price of this item; the discounted price of j is a function of the number of buyers who are matched to j.
After the conference version of our paper has been published, several authors explored the complexity of finding good allocations in \(\mathsf{GASP}\), both in the approvalbased model, which is the focus of our work (Lee and Williams 2017), and in the ordinal model, where each agent ranks pairs of the form ‘(activity, group size)’ (Darmann 2015). Igarashi et al. (2017a, b) and subsequently Gupta et al. (2017) considered a variant of \(\mathsf{GASP}\) where agents are connected by a social network and members of each group have to form a connected subgraph in this network; they adapt the solution concepts that we propose to this richer setting, and put forward a number of algorithms and complexity results. A survey of this literature is provided by Darmann and Lang (2017).
2 Formal model
We start by giving a formal definition of our model.
Definition 1
An instance of the Group Activity Selection Problem (GASP) is given by a set of agents \(N = \{1,\ldots , n\}\), a set of activities \(A=A^*\cup \{a_{\emptyset }\}\), where \(A^* = \{a_1, \ldots , a_m\}\), and a profile P, which consists of n votes (one for each agent): \(P = (V_1,\ldots , V_n)\). The vote of agent i describes his preferences over the set of alternatives \(X = X^*\cup \{a_{\emptyset }\}\), where \(X^* =A^* \times \{1,\ldots ,n\}\); alternative (a, k), \(a\in A^*\), is interpreted as “activity a with k participants”, and \(a_{\emptyset }\) is the void activity.
The vote \(V_i\) of an agent \(i\in N\) (also denoted by \(\succeq _i\)) is a weak order over \(X^*\); its induced strict preference and indifference relations are denoted by \(\succ _i\) and \(\sim _i\), respectively. We set \(S_i=\{(a, k)\in X^*\mid (a, k)\succ _i a_{\emptyset }\}\); we say that voter i approves of all alternatives in \(S_i\), and refer to the set \(S_i\) as the induced approval vote of voter i. We assume that no agent can be prevented from switching from his current assignment to the void activity; as a consequence, we can assume that each agent i is indifferent among all alternatives in \(\{(a, k)\in X^*\mid a_{\emptyset }\succ _i (a, k)\}\).
Throughout the paper we will mostly focus on a special case of our problem where no agent is indifferent between the void activity and any other alternative (i.e., for every \(i\in N\) we have \(\{x\in X^*\mid x\sim _ia_{\emptyset }\}=\emptyset \)), and each agent is indifferent between all the alternatives in \(S_i\). In other words, preferences are trichotomous: the agent partitions X into three clusters \(S_i\), \(\{a_{\emptyset }\}\) and \(X{\setminus } (S_i \cup \{a_{\emptyset }\})\), is indifferent between two alternatives in the same cluster, prefers any (a, k) in \(S_i\) to \(a_{\emptyset }\), and \(a_{\emptyset }\) to any (a, k) in \(X {\setminus } (S_i \cup \{a_{\emptyset }\})\); we denote this special case of our problem by \(\mathsf{a\text {}GASP}\).
It will be convenient to distinguish between activities that are unique and ones that exist in multiple copies. For instance, if there is a single tennis table and two buses, then we can organize one table tennis tournament, two bus trips (we assume that there is only one potential destination for the bus trip, so these trips are identical), and an unlimited number of hikes (again, we assume that there is only one hiking route). This distinction will be useful for the purposes of complexity analysis: for instance, some of the problems we consider are easy when we have k copies of one activity, but hard when we have k distinct activities. Formally, we say that two activities a and b are equivalent if for every agent i and every \(j\in \{1, \ldots , n\}\) it holds that \((a, j)\sim _i(b, j)\). We say that an activity \(a\in A^*\) is kcopyable if \(A^*\) contains exactly k activities that are equivalent to a (including a itself). We say that a is simple if it is 1copyable; if a is kcopyable for \(k\ge n\), we will say that it is \(\infty \)copyable (note that we would never need to organize more than n copies of any activity). If some activities in \(A^*\) are equivalent, \(A^*\) can be represented more succinctly by listing one representative of each equivalence class, together with the number of available copies. However, as long as we make the reasonable assumption that each activity exists in at most n copies, this representation is at most polynomially more succinct.
Our model can be enriched by specifying a set of constraints \(\varGamma \). One constraint that arises frequently in practice is a global cardinality constraint, which specifies a bound K on the number of activities to be organized. More generally, we could also consider more complex constraints on the set of activities that can be organized simultaneously, which can be encoded, e.g., by a propositional formula or a set of linear inequalities. We leave the study of this more general setting as a topic for future work. There can also be external constraints on the number of participants for each activity: for instance, a bus can fit at most 40 people. However, these constraints can be incorporated into agents’ preferences, by assuming that all agents view the alternatives that do not satisfy these constraints as unacceptable.
2.1 Special cases
We now consider some natural restrictions on agents’ preferences that may simplify the problem of finding a good assignment. We first need to introduce some additional notation. Given a vote \(V_i\) and an activity \(a \in A^*\), let \(S_i^{\downarrow a}=\{k \mid (a, k) \in S_i\}\); the set \(S_i^{\downarrow a}\) is the projection of \(S_i\) onto \(\{a\} \times \{1,\ldots ,n\}\). Also, for integers i, j, we write \([i,j]=\{z \in \mathbb {Z} \mid i \le z \le j\}\); note that \([i, j]=\emptyset \) for \(i>j\).
Example 1
We are now ready to define two types of restricted preferences for \(\mathsf{a\text {}GASP}\) that are directly motivated by our running example, namely, increasing and decreasing preferences. Informally, under increasing preferences an agent prefers to share each activity with as many other participants as possible (e.g., because each activity has an associated cost, which has to be split among the participants), and under decreasing preferences an agent prefers to share each activity with as few other participants as possible (e.g., because each activity involves sharing a limited resource). Of course, an agent’s preferences may also be increasing with respect to some activities and decreasing with respect to others, depending on the nature of each activity. We provide a formal definition for \(\mathsf{a\text {}GASP}\) only; however, it can be extended to \(\mathsf{GASP}\) in a straightforward way.
Definition 2
Consider an instance (N, A, P) of \(\mathsf{a\text {}GASP}\). We say that the preferences of agent i are increasing (INC) with respect to an activity \(a\in A^*\) if there exists a threshold \(\ell _i^a\in \{1, \ldots , n+1\}\) such that \(S_i^{\downarrow a} = [\ell _i^a, n]\). Similarly, we say that the preferences of agent i are decreasing (DEC) with respect to an activity \(a\in A^*\) if there exists a threshold \(u_i^a\in \{0, \ldots , n\}\) such that \(S_i^{\downarrow a} = [1, u_i^a]\).
We say that an instance (N, A, P) of \(\mathsf{a\text {}GASP}\) is increasing (respectively, decreasing) if the preferences of each agent \(i\in N\) are increasing (respectively, decreasing) with respect to each activity \(a\in A^*\). We say that an instance (N, A, P) of \(\mathsf{a\text {}GASP}\) is mixed increasing–decreasing (MIX) if there exists a set \(A^+\subseteq A^*\) such that for each agent \(i\in N\) his preferences are increasing with respect to each \(a\in A^+\) and decreasing with respect to each \(a\in A^ = A^*{\setminus } A^+\).
For some activities, an agent may have both a lower and an upper bound on the acceptable group size: e.g., one may prefer to go on a hike with at least three other people, but does not want the group to be too large (so that it can maintain a good pace). In this case, we say that an agent has interval (INV) preferences; note that INC/DEC/MIX preferences are a special case of interval preferences.
Definition 3
Consider an instance (N, A, P) of \(\mathsf{a\text {}GASP}\). We say that the preferences of agent i are interval (INV) if for each \(a\in A^*\) there exists a pair of thresholds \(\ell _i^a, u_i^a\in \{1, \ldots , n\}\) such that \(S_i^{\downarrow a} = [\ell _i^a, u_i^a]\).
Other natural constraints on preferences include restricting the size of \(S_i\) (or, more liberally, that of \(S_i^{\downarrow a}\) for each \(a\in A^*\)), or requiring agents to have similar preferences: for instance, one could limit the number of agent types, i.e., require that the set of agents can be split into a small number of groups so that the agents in each group have identical preferences. We will not define such constraints formally, but we will indicate if they are satisfied by the instances constructed in the hardness proofs in Sect. 4.1.
Example 2
(a, 1)  (a, 2)  (a, 3)  (a, 4)  (a, 5)  (b, 1)  (b, 2)  (b, 3)  (b, 4)  (b, 5)  

1  +  +  +  \(\)  \(\)  \(\)  \(\)  \(\)  \(\)  \(\) 
2  +  +  \(\)  \(\)  \(\)  \(\)  \(\)  \(\)  \(\)  \(\) 
3  +  \(\)  \(\)  \(\)  \(\)  \(\)  +  +  +  + 
4  +  +  \(\)  \(\)  \(\)  \(\)  +  +  +  + 
5  +  +  \(\)  \(\)  \(\)  \(\)  \(\)  \(\)  +  + 
(a, 1)  (a, 2)  (a, 3)  (a, 4)  (a, 5)  (a, 6)  (b, 1)  (b, 2)  (b, 3)  (b, 4)  (b, 5)  (b, 6)  

1  +  +  +  \(\)  \(\)  \(\)  \(\)  \(\)  \(\)  \(\)  \(\)  \(\) 
2  +  +  \(\)  \(\)  \(\)  \(\)  \(\)  \(\)  \(\)  \(\)  \(\)  \(\) 
3  +  \(\)  \(\)  \(\)  \(\)  \(\)  \(\)  +  +  +  +  + 
4  +  +  \(\)  \(\)  \(\)  \(\)  \(\)  +  +  +  +  + 
5  +  +  \(\)  \(\)  \(\)  \(\)  \(\)  \(\)  \(\)  +  +  + 
6  \(\)  \(\)  +  +  +  +  \(\)  \(\)  \(\)  \(\)  \(\)  \(\) 
The resulting instance is no longer mixed increasing–decreasing.
2.2 \(\mathsf{GASP}\) and hedonic games
Recall that a hedonic game (Banerjee et al. 2001; Bogomolnaia and Jackson 2002) is given by a set of agents N, and, for each agent \(i\in N\), a weak order \(\ge _i\) over all coalitions (i.e., subsets of N) that include i (the associated strict preference and indifference relations are denoted by \(>_i\) and \(=_i\), respectively). That is, in a hedonic game each agent has preferences over coalitions that he can be a part of. A coalition S, \(i\in S\), is said to be unacceptable for player i if \(\{i\}>_i S\). A hedonic game is said to be anonymous if each agent is indifferent among all coalitions of the same size that include him, i.e., for every \(i\in N\) and every \(S, T\subseteq N{\setminus }\{i\}\) such that \(S=T\) it holds that \(S\cup \{i\}\ge _i T\cup \{i\}\) and \(T\cup \{i\}\ge _i S\cup \{i\}\).
At a first glance, it may seem that the \(\mathsf{GASP}\) formalism is more general than that of hedonic games, since in \(\mathsf{GASP}\) the agents care not only about their coalition, but also about the activity they have been assigned to. However, we will now argue that \(\mathsf{GASP}\) can be embedded into the hedonic games framework.
Given an instance of the \(\mathsf{GASP}\) problem (N, A, P) with \(N=n\), where the ith agent’s preferences are given by a weak order \(\succeq _i\), we construct a hedonic game H(N, A, P) as follows. We create \(n+m\) players; the first n players correspond to agents in N, and the last m players correspond to activities in \(A^*\). The last m players are indifferent among all coalitions. For each \(i=1, \ldots , n\), player i ranks every nonsingleton coalition with no activity players as unacceptable; similarly, all coalitions with two or more activity players are ranked as unacceptable. The preferences over coalitions with exactly one activity player are derived naturally from the weak orders \(\succeq _i\): if S, T are two coalitions involving player i, x is the unique activity player in S, and y is the unique activity player in T, then i weakly prefers S to T in H(N, A, P) if and only if \((x, S1)\succeq _i (y, T1)\), and i weakly prefers S to \(\{i\}\) in H(N, A, P) if and only if \((x, S1)\succeq _i a_{\emptyset }\). We emphasize that the resulting hedonic games are not anonymous. Further, while this embedding allows us to apply the standard solution concepts for hedonic games without redefining them, the intuition behind these solution concepts is not always preserved (e.g., because activity players never want to deviate). Therefore, in Sect. 3, we will provide formal definitions of the relevant hedonic games solution concepts adapted to the setting of \(\mathsf{GASP}\).
We remark that when \(A^*\) consists of a single \(\infty \)copyable activity (i.e., there are n activities in \(A^*\), all of them equivalent to each other), \(\mathsf{GASP}\) become equivalent to anonymous hedonic games. Such games have been studied in detail by Ballester (2004), who provides a number of complexity results for them. In particular, he shows that finding an outcome that is core stable, Nash stable or individually stable (see Sect. 3 for the definitions of some of these concepts in the context of \(\mathsf{GASP}\)) is \(\mathsf{NP}\)hard. Clearly, all these complexity results also hold for \(\mathsf{GASP}\). However, they do not directly imply similar hardness results for \(\mathsf{a\text {}GASP}\).
3 Solution concepts
Having discussed the basic model of \(\mathsf{GASP}\), as well as a few of its extensions and special cases, we are ready to define what constitutes a solution to this problem.
Definition 4
Clearly, not all assignments are equally desirable. As a minimum requirement, no agent should be assigned to a coalition that he deems unacceptable. More generally, we prefer an assignment to be stable, i.e., no agent (or group of agents) should have an incentive to change its activity. Thus, we will now define several solution concepts, i.e., classes of desirable assignments. We will state our definitions for the general case of \(\mathsf{GASP}\) and then indicate how they simplify in the case of \(\mathsf{a\text {}GASP}\). Given the connection to hedonic games pointed out in Sect. 2.2, we will proceed by adapting the standard hedonic game solution concepts to our setting; however, this has to be done carefully to preserve the intuition that is specific to our model.
The first solution concept that we will consider is individual rationality.
Definition 5
Given an instance (N, A, P) of \(\mathsf{GASP}\), an assignment \(\pi :N\rightarrow A\) is said to be individually rational if for every \(j=1,\ldots , m\) and every agent \(i\in \pi ^j\) it holds that \((a_j, \pi ^j) \succeq _i a_{\emptyset }\).
In the case of \(\mathsf{a\text {}GASP}\), this definition can be rewritten as follows: \(\pi \) is individually rational if for every \(j=1,\ldots , m\) and every agent \(i\in \pi ^j\) it holds that \((a_j, \pi ^j)\in S_i\). Clearly, if an assignment is not individually rational, there exists an agent that can benefit from abandoning his coalition in favor of the void activity. Further, an individually rational assignment always exists: for instance, we can set \(\pi (i)=a_{\emptyset }\) for all \(i\in N\). However, given an instance of \(\mathsf{a\text {}GASP}\), a benevolent central authority would want to maximize the number of agents that are assigned to nonvoid activities. Formally, let \(\#(\pi )=\{i \in N \mid \pi (i)\ne a_{\emptyset }\}\) denote the number of agents assigned to a nonvoid activity. We say that \(\pi \) is maximum individually rational if \(\pi \) is individually rational and \(\#(\pi )\ge \#(\pi ')\) for every individually rational assignment \(\pi '\). Further, we say that \(\pi \) is perfect ^{2} if \(\pi \) is individually rational and \(\#(\pi )=n\). We denote the size of a maximum individually rational assignment for an instance (N, A, P) by \(\#(N, A, P)\). In Sect. 4, we study the complexity of computing a perfect or maximum individually rational assignment for \(\mathsf{a\text {}GASP}\), both for the general model and for the special cases defined in Sect. 2.1.
Example 3

\(\pi _1(1)=\pi _1(2)=a\), \(\pi _1(3)=\pi _1(4)=b\), \(\pi _1(5)=a_{\emptyset }\);

\(\pi _2(1)=\pi _2(5)=a\), \(\pi _2(3)=\pi _2(4)=b\), \(\pi _2(2)=a_{\emptyset }\);

\(\pi _3(2)=\pi _3(5)=a\), \(\pi _3(3)=\pi _3(4)=b\), \(\pi _3(1)=a_{\emptyset }\).
Definition 6
 (1)
\(\pi \) is individually rational,
 (2)
for every agent \(i\in N\) with \(\pi (i)\ne a_{\emptyset }\) and every \(a_j \in A^* {\setminus } \{\pi (i)\}\) it holds that \((\pi (i), \pi (i)) \succeq _i (a_j, \pi ^j + 1)\), and
 (3)
for every agent \(i\in N\) with \(\pi (i)=a_{\emptyset }\) and every \(a_j\in A^*\) it holds that \(a_{\emptyset }\succeq (a_j, \pi ^j+1)\).
In the case of \(\mathsf{a\text {}GASP}\), this definition simplifies as follows: \(\pi \) is Nash stable if it is individually rational and for every agent \(i \in N\) such that \(\pi (i) = a_{\emptyset }\) and every \(a_j \in A^*\) it holds that \((a_j, \pi ^j + 1) \not \in S_i\). If \(\pi \) is not Nash stable, then there is an agent assigned to the void activity who wants to join a group that is engaged in a nonvoid activity, i.e., he would have approved of the size of this group and its activity choice if he was one of them. Note that in \(\mathsf{a\text {}GASP}\) an agent assigned to a nonvoid activity wants to deviate only if he disapproves of that activity, i.e., we do not have to worry about agents moving from one nonvoid activity to another one.
The requirement of Nash stability is much stronger than that of individual rationality, and there are cases where a Nash stable assignment does not exist.
Proposition 1
For each \(n\ge 2\), there exists an instance (N, A, P) of \(\mathsf{a\text {}GASP}\) with \(N=n\) that does not admit a Nash stable assignment. This holds even if \(A^*=1\) and all agents have interval preferences.
Proof
Consider an instance (N, A, P) of \(\mathsf{a\text {}GASP}\) with \(A^*=\{a\}\) and induced approval votes given by \(S_1=\{(a,1)\}\), \(S_2=\{(a,2)\}\) and \(S_i= \emptyset \) for all \(i \ge 3\); note that all approved sets are intervals. The two individually rational assignments are \(\pi _1\) with \(\pi _1 (i)= a_{\emptyset }\) for all \(i \in N\) and \(\pi _2\) with \(\pi _2 (1)=a\) and \(\pi _2 (i)=a_{\emptyset }\) for all \(i \in N {\setminus } \{1\}\). Neither of these assignments is Nash stable: in \(\pi _1\) agent 1 wants to engage in a, and in \(\pi _2\) agent 2 wants to join agent 1. \(\square \)
Example 4
Let us consider again the instances of \(\mathsf{a\text {}GASP}\) in Example 2. For the instance with \(n = 5\) there are two Nash stable assignments: \(\pi _1\) and \(\pi _2\). For the instance with \(n = 6\) no assignment is Nash stable.
In Definition 6 an agent is allowed to join a coalition even if the members of this coalition are opposed to this. In contrast, the notion of individual stability only allows a player to join a group if none of the existing group members objects.
Definition 7
 (1)
\(\pi \) is individually rational,
 (2)
for every agent \(i\in N\) with \(\pi (i)\ne a_{\emptyset }\) and every \(a_j \in A^* {\setminus } \{\pi (i)\}\) such that \((a_j, \pi ^j+1) \succ _i (\pi (i), \pi (i))\) there exists an agent \(i'\in \pi ^j\) with \((a_j, \pi ^j) \succ _{i'} (a_j, \pi ^j+1)\), and
 (3)
for every agent \(i\in N\) with \(\pi (i)=a_{\emptyset }\) and every \(a_j\in A^*\) such that \((a_j, \pi ^j+1)\succ _i a_{\emptyset }\) there exists an agent \(i'\in \pi ^j\) with \((a_j, \pi ^j) \succ _{i'} (a_j, \pi ^j+1)\).
For \(\mathsf{a\text {}GASP}\), we obtain the following simpler notion: \(\pi \) is individually stable if for each agent \(i\in N\) with \(\pi (i)=a_{\emptyset }\) and each \(a_j\in A^*\) it holds that \((a_{j},\pi ^{j}+1)\not \in S_{i'}\) for some \(i'\in \pi ^j\cup \{i\}\).
Proposition 2
Every instance of \(\mathsf{a\text {}GASP}\) admits an individually stable assignment; moreover, this assignment can be computed by the following simple algorithm.
 1.
Initialize \(\pi \) with \(\pi (i) = a_{\emptyset }\) for all \(i\in N\);
 2.While there is \((i,a_j) \in N \times A^{*}\) with
 (a)
\(\pi (i)=a_{\emptyset }\)
 (b)
\((a_{j},\pi ^{j}+1)\in S_{i}\)
 (c)
\((a_{j},\pi ^{j}+1)\in S_{i'}\) for all \(i'\in \pi ^j\)
 (a)
 3.
Do \(\pi (i) \leftarrow a_j\)
 4.
End while
 5.
Return \(\pi \).
Proof
Note first that the whenever the body of the While loop is executed, the number of agents assigned to a nonvoid activity increases by one, and no agent is ever unassigned from a nonvoid activity. This means, in particular, that the algorithm always terminates. Conditions (b) and (c) in Step 2 ensure that agents assigned to a nonvoid activity are always happy with the number of participants assigned to that activity, i.e., for every \(i\in N\) with \(\pi (i) \ne a_{\emptyset }\) it holds that \((a_{j},\pi ^{j})\in S_{i}\). Hence, the assignment returned by the algorithm is individually rational. Now, when the algorithm stops, either there are no agents assigned to the void activity, in which case the returned assignment \(\pi \) is perfect (and, a fortiori, individually stable), or for every agent i such that \(\pi (i) = a_{\emptyset }\) there is no \(a_j\) such that \((a_{j},\pi ^{j}+1)\in S_{i}\) and \((a_{j},\pi ^{j}+1)\in S_{i'}\) for all \(i'\in \pi ^j\). Hence \(\pi \) is individually stable.\(\square \)
We remark that an analogue of Proposition 2 for hedonic games with dichotomous preferences has been observed by Peters (2016) (Proposition 2).
Note also that if all agents have increasing preferences, individual stability is equivalent to Nash stability: no player would object to having new members join his group.
Example 5

\(1 \mapsto a\);

\(2 \mapsto a\), because agent 1 does not object to that.
A related solution concept for hedonic games is contractual individual stability: under this concept, an agent is only allowed to move from one coalition to another if neither the members of his new coalition nor the members of his old coalition object to the move. It is not hard to adapt this concept for \(\mathsf{GASP}\).
Definition 8
 (1)
\(\pi \) is individually rational,
 (2)
for every agent \(i\in N\) with \(\pi (i)\ne a_{\emptyset }\) and every \(a_j \in A^* {\setminus } \{\pi (i)\}\) such that \((a_j, \pi ^j+1) \succ _i (\pi (i), \pi (i))\) there exists an agent \(i'\in \pi ^j\) with \((a_j, \pi ^j) \succ _{i'} (a_j, \pi ^j+1)\) or an agent \(i''\in \pi ^i{\setminus }\{i\}\) with \((a_i, \pi (i))\succ _{i''} (a_i, \pi (i)1)\), and
 (3)
for every agent \(i\in N\) with \(\pi (i)=a_{\emptyset }\) and every \(a_j\in A^*\) such that \((a_j, \pi ^j+1)\succ _i a_{\emptyset }\) there exists an agent \(i'\in \pi ^j\) with \((a_j, \pi ^j) \succ _{i'} (a_j, \pi ^j+1)\).
However, in \(\mathsf{a\text {}GASP}\), for individually rational assignments contractual individual stability is equivalent to individual stability. Indeed, in \(\mathsf{a\text {}GASP}\) no agent assigned to a nonvoid activity has an incentive to deviate, so we only need to consider deviations from singleton coalitions.
The solution concepts discussed so far deal with individual deviations; resistance to group deviations is captured by the notion of the core and its variants. One typically distinguishes between strong group deviations, which are beneficial for each member of the deviating group, and weak group deviations, where the deviation should be beneficial for at least one member of the deviating group and nonharmful for others; these notions of deviation correspond to, respectively, the core and the strict core.
Definition 9
Given an instance (N, A, P) of \(\mathsf{GASP}\), an assignment \(\pi :N\rightarrow A\) is said to be core stable (or in the core) if it is individually rational and there is no \(E\subseteq N\), \(E\ne \emptyset \), such that for some \(a_j\in A^{*}\) with \(\pi ^{j}\subseteq E\) it holds that \((a_{j},E)\succ _i (\pi (i),\pi (i))\) for all \(i\in E\).
In the context of \(\mathsf{a\text {}GASP}\), if the initial assignment is individually rational, strong group deviations amount to players in \(\pi ^0\) forming a coalition in order to engage in a nonvoid activity. Therefore, the definition of core stability simplifies as follows: an assignment \(\pi \) is in the core if it is individually rational and there is no \(E\subseteq \pi ^0\) such that for some \(a_{j}\in A^{*}\) with \(\pi ^{j}=\emptyset \) it holds that \((a_{j},E)\in S_{i}\) for all \(i\in E\).
 1.
Initialization: \(\pi (i) \leftarrow a_{\emptyset }\) for all \(i\in N\); \(A' \leftarrow A^*\);
 2.
While there is an activity \(a \in A'\) and an integer k with \(1\le k \le n\) such that at least k agents assigned to \(a_{\emptyset }\) approve (a, k)
 3.
Do assign these k agents to a; remove a from \(A'\)
 4.
End while
 5.
Return \(\pi \).
Definition 10
Given an instance (N, A, P) of \(\mathsf{GASP}\), an assignment \(\pi :N\rightarrow A\) is said to be strictly core stable (or in the strict core) if it is individually rational and there is no \(E\subseteq N\) such that for some \(a_{j}\in A^{*}\) with \(\pi ^j\subseteq E\) it holds that \((a_{j},E)\succeq _i (\pi (i),\pi (i))\) for all \(i\in E\) and \((a_{j},E)\succ _i (\pi (i),\pi (i))\) for some \(i \in E\).
For \(\mathsf{a\text {}GASP}\), we obtain the following definition: an assignment \(\pi \) is strictly core stable if it is individually rational and there is no \(E\subseteq N\) with \(E\cap \pi ^0\ne \emptyset \) such that for some \(a_{j}\in A^{*}\) with \(\pi ^{j}\subseteq E\) it holds that \((a_j, E)\in S_i\) for all \(i\in E\). Here, the condition \(E\cap \pi ^0\ne \emptyset \) ensures that al least one deviating agent strictly prefers the new outcome. Note that, in contrast to strong deviations, weak deviations may involve agents engaged in a nonvoid activity.
Condition \(\pi ^j \subseteq E\) in Definitions 9 and 10 captures that intuition that deviating agents cannot prevent other agents from engaging in their selected activity, and, to join a group that has selected some activity, the deviators require cooperation of the group members.
While the core of an \(\mathsf{a\text {}GASP}\) is always nonempty, the strict core may be empty. In addition, note that a maximum individually rational assignment is always individually stable and in the core, but may not be in the strict core; this holds even if agents have increasing preferences.
Example 6
Consider an instance (N, A, P) of \(\mathsf{a\text {}GASP}\) where \(N=\{1,2,3\}\), \(A^*=\{a,b\}\), \(S_1=\{(a,2),(a,3)\}\), \(S_2=\{(b,2),(b,3)\}\), and \(S_3=\{(a,2),(a,3), (b,2), (b,3)\}\). Both agent 1 and agent 2 want to form a coalition with agent 3 (who is happy to oblige), but have incompatible preferences over activities. Thus, the strict core of this game is empty.
By adding activities not approved by any agents and agents that do not approve any activities, we can extend Example 6 to any \(A^*\) with \(A^*\ge 2\) and any \(n\ge 3\). However, the following proposition illustrates that both of these conditions are necessary: if \(A^*=1\) or \(n\le 2\), the strict core of an \(\mathsf{a\text {}GASP}\) is guaranteed to be nonempty.
Proposition 3
For every instance of \(\mathsf{a\text {}GASP}\) with \(n\le 2\) or \(A^*=1\) every maximum individually rational assignment is in the strict core.
Proof
If \(n=1\), our claim is immediate. Now, suppose that \(n=2\). If our instance admits a perfect assignment, then this assignment is in the strict core. Thus, suppose that this is not the case. If the unique individually rational assignment \(\pi \) is such that \(\pi (1)=\pi (2)=a_{\emptyset }\), there is nothing that the agents can do, so \(\pi \) is in the strict core. Finally, suppose that in every maximum individually rational assignment exactly one agent is assigned to the void activity. Then any acceptable deviation that improves his welfare results in a perfect assignment, a contradiction.
If \(A^*=\{a_1\}\), consider a maximum individually rational assignment \(\pi \); we have \(\#\pi =\pi ^1\). If a coalition E can successfully deviate from \(\pi \), then \(\pi ^1\subset E\), \(\pi ^0\cap E\ne \emptyset \). Hence, by assigning all agents in E to \(a_1\) we obtain an individually rational assignment \(\pi '\) with \(\#\pi '>\#\pi \), a contradiction.\(\square \)
It is not hard to see that strict core stability implies core stability and individual stability, and Nash stability implies individual stability. However, the converse implications are not true. Moreover, Nash stability does not imply core stability or strict core stability, core stability does not imply individual stability, and neither core stability nor strict core stability imply Nash stability.
4 Computing good outcomes
In this section, we consider the computational complexity of finding a “good” assignment for \(\mathsf{a\text {}GASP}\). We mostly focus on finding perfect or maximum individually rational assignments; towards the end of the section, we also consider Nash stability and strict core stability. Besides the general case of our problem, we consider special cases obtained by combining constraints on the number and type of activities (e.g., unlimited number of simple activities, a constant number of copyable activities, etc.) and constraints on voters’ preferences (INC, DEC, INV, etc.). Note that if we can find a maximum individually rational assignment, we can easily check if a perfect assignment exists, by looking at the size of our maximum individually rational assignment. Thus, we will state our hardness results for the “easier” perfect assignment problem and phrase our polynomialtime algorithms in terms of the “harder” problem of finding a maximum individually rational assignment.
4.1 Individual rationality: hardness results
We start by presenting four \(\mathsf{NP}\)completeness results, which show that deciding whether a perfect assignment exists is hard even under fairly strong constraints on preferences and activities. We remark that this problem is in \(\mathsf{NP}\) (one can check in linear time if a given assignment is individually rational and assigns each agent to a nonvoid activity), so in what follows we will only provide the proofs of \(\mathsf{NP}\)hardness.
Our first hardness result applies when all activities are simple and the agents’ preferences are increasing.
Theorem 1
It is \(\mathsf{NP}\)complete to decide whether \(\mathsf{a\text {}GASP}\) admits a perfect assignment, even when all activities in \(A^*\) are simple and all agents have increasing preferences.
Proof
We provide a reduction from Exact Cover by 3Sets (X3C). Recall that an instance of X3C is a pair \(\langle X, \mathcal{Y}\rangle \),where \(X = \{1, \ldots , 3q\}\) and \(\mathcal{Y}= \{Y_1,\ldots , Y_p\}\) is a collection of 3element subsets of X; it is a “yes”instance if X can be covered by exactly q sets from \(\mathcal{Y}\), and a “no”instance otherwise. It is known that X3C remains \(\mathsf{NP}\)complete even when restricted to instances \(\langle X, \mathcal{Y}\rangle \) in which for every pair of sets \(Y_g, Y_j \in \mathcal{Y}\) with \(g \not =j \) we have \(Y_g \cap Y_j \le 1\) (see Jiang et al. 2011). Given an instance \(\langle X, \mathcal{Y}\rangle \) of X3C that satisfies this restriction, we construct an instance of \(\mathsf{a\text {}GASP}\) as follows. We set \(N = \{1, \ldots , 3q\}\) and \(A^* = \{a_1, \ldots , a_p\}\). For each agent i, we define his vote \(V_i\) so that the induced approval vote \(S_i\) is given by \(S_i = \{ (a_j, k) \mid i \in Y_j, k \ge 3 \}\), and let \(P=(V_1, \ldots , V_n)\). Clearly, (N, A, P) is an instance of \(\mathsf{a\text {}GASP}\) with increasing preferences and the description size of this instance is polynomial in q and p. The condition \(Y_g\cap Y_j\le 1\) for \(g\ne j\) ensures that all activities are simple. We claim that \(\langle X, \mathcal{Y}\rangle \) is a “yes”instance of X3C if and only if (N, A, P) admits a perfect assignment.
Indeed, suppose that there is a set of indices \(I \subseteq \{1, \ldots , p\}\) such that \(I = q\) and \(\cup _{i \in I}Y_i = X\). Define the assignment \(\pi \) by \(\pi (i) = a_j\), where j is such that (1) \(i \in Y_j\) and (2) \(j \in I\). As \(\{Y_i\}_{i \in I}\) is a partition of X, this assignment is welldefined and each agent is assigned to a nonvoid activity. Moreover, for each agent \(i\in N\) we have \((\pi (i), 3) \in S_i\) and the number of agents assigned to \(\pi (i)\) in \(\pi \) is exactly 3, so \(\pi \) is individually rational. Hence, \(\pi \) is a perfect assignment.
Conversely, assume that \(\pi \) is a perfect assignment for (N, A, P). Consider an alternative \(a_j\in A^*\) with \(\pi ^j\ne \emptyset \). Since \(a_j\) is approved by exactly 3 agents, we have \(\pi ^j\le 3\). On the other hand, since no agent approves of \((a_j, 1)\) or \((a_j, 2)\), it has to be the case that \(\pi ^j= 3\). Now, since \(\pi \) is a perfect assignment, it follows that there are exactly q activities \(a_j\) with \(\pi ^j= 3\). Therefore, the collection of subsets \(\{Y_j\mid \pi ^j=3\}\) is an exact cover for X. \(\square \)
Our second hardness result applies to simple activities and decreasing preferences, and holds even if each agent is willing to share each activity with at most one other agent. Its proof (together with proofs of Theorems 3 and 4) is delayed to appendix A.
Theorem 2
It is \(\mathsf{NP}\)complete to decide whether \(\mathsf{a\text {}GASP}\) admits a perfect assignment, even when all activities in \(A^*\) are simple, all agents have decreasing preferences, and, moreover, for every agent \(i\in N\) and every alternative \(a\in A^*\) we have \(S_i^{\downarrow a} \subseteq \{1, 2\}\).
Our third hardness result also concerns simple activities and decreasing preferences. However, unlike Theorem 2, it holds even if each agent approves of at most 3 activities.
Theorem 3
It is \(\mathsf{NP}\)complete to decide whether \(\mathsf{a\text {}GASP}\) admits a perfect assignment, even when all activities in \(A^*\) are simple, all agents have decreasing preferences, and, moreover, for every agent \(i\in N\) it holds that \(\{a\mid S_i^{\downarrow a}\ne \emptyset \}\le 3\).
Our fourth hardness result applies even when there is only one activity, which is \(\infty \)copyable, and every agent approves at most two alternatives; however, the agents’ preferences constructed in our proof do not satisfy any of the structural constraints defined in Sect. 2.1.
Theorem 4
It is \(\mathsf{NP}\)complete to decide whether \(\mathsf{a\text {}GASP}\) admits a perfect assignment, even when all activities in \(A^*\) are equivalent (i.e., \(A^*\) consists of a single \(\infty \)copyable activity a) and for every agent \(i\in N\) we have \(S_i^{\downarrow a}\le 2\).
4.2 Individual rationality: easiness results
The hardness results in Sect. 4.1 imply that if \(A^*\) contains an unbounded number of distinct activities, finding a maximum individually rational assignment is computationally hard, even under strong restrictions on agents’ preferences (such as INC or DEC). Thus, we can only hope to develop an efficient algorithm for this problem if we assume that the total number of activities is small (i.e., bounded by a constant) or, more liberally, that the number of pairwise nonequivalent activities is small, and the agents’ preferences satisfy additional constraints. We will now consider both of these settings, starting with the case where \(m=A^*\) is bounded by a constant.
Theorem 5
There exists an algorithm that given an instance of \(\mathsf{a\text {}GASP}\) finds a maximum individually rational assignment and runs in time \((n+1)^m{\text{ poly }}(n)\).
Proof
We will check, for each \(r=0, \ldots , n\), if there is an individually rational assignment \(\pi \) with \(\#(\pi )=r\), and output the maximum value of r for which this is the case. Fix an \(r\in \{0, \ldots , n\}\). For every vector \((n_1, \ldots , n_m)\in \{0, \ldots , n\}^m\) that satisfies \(n_1+\cdots +n_m=r\) we will check if there exists an assignment of agents to activities such that for each \(j=1, \ldots , m\) exactly \(n_j\) agents are assigned to activity \(a_j\) (with the remaining agents being assigned to the void activity), and each agent approves of the resulting assignment. Each check will take \({\text{ poly }}(n)\) steps, and there are at most \((n+1)^m\) vectors to be checked; this implies our bound on the running time of our algorithm.
For a fixed vector \((n_1, \ldots , n_m)\), we construct an instance of the network flow problem as follows. Our network has a source s, a sink t, a node i for each player \(i=1, \ldots , n\), and a node \(a_j\) for each \(a_j\in A^*\). There is an arc of unit capacity from s to each agent, and an arc of capacity \(n_j\) from node \(a_j\) to the sink. Further, there is an arc of unit capacity from i to \(a_j\) if and only if \((a_j, n_j)\in S_i\). It is not hard to see that an integral flow F of size r in this network corresponds to an individually rational assignment of size r. It remains to observe that it can be checked in polynomial time whether a given network admits a flow of a given size. \(\square \)
Moreover, when \(A^*\) consists of a single simple activity a, a maximum individually rational assignment can be found by a straightforward algorithm.
Proposition 4
Given an instance (N, A, P) of \(\mathsf{a\text {}GASP}\) with \(A^*=\{a\}\), we can find a maximum individually rational assignment for (N, A, P) in time O(s), where \(s=\sum \nolimits _{i\in N}S_i\).
Proof
Clearly, (N, A, P) admits an individually rational assignment \(\pi \) with \(\#(\pi )=k\) if and only if \(\left\{ i\mid (a,k)\in S_i\right\} \ge k\). We use an integer array \(C[\ell ]\), \({\ell \in N}\). We initialize \(C[\ell ]=0\) for all \(\ell \in N\). Then for each \(i\in N\) we scan the set \(S_i\); for each \((a,j)\in S_i\) we increment C[j] by 1. This procedure can be completed in time O(s); at the end of this step for each \(\ell \in N\) the cell \(C[\ell ]\) of our array stores the number of agents who approve \((a,\ell )\). We then scan this array right to left to find the largest value of \(\ell \) with \(C[\ell ]\ge \ell \). Once this value is found, another scan through agents’ approval lists is sufficient to find a corresponding coalition. \(\square \)
Example 7
(a, 1)  (a, 2)  (a, 3)  (a, 4)  (a, 5)  (a, 6)  

1  \(\)  \(\)  \(\)  +  +  + 
2  \(\)  +  +  +  +  + 
3  \(\)  \(\)  +  +  \(\)  \(\) 
4  \(\)  +  +  \(\)  \(\)  \(\) 
5  \(\)  \(\)  \(\)  +  +  + 
6  +  +  +  +  +  + 
Now, suppose that \(A^*\) contains many activities, but most of them are equivalent to each other; for instance, \(A^*\) may consist of a single kcopyable activity, for a large value of k. Then the algorithm described in the proof of Theorem 5 is no longer efficient, but this setting still appears to be more tractable than the one with many distinct activities. Of course, by Theorem 4, in the absence of any restrictions on the agents’ preferences, finding a maximum individually rational assignment is hard even for a single \(\infty \)copyable activity. However, we will now show that this problem becomes easy if we additionally assume that the agents’ preferences are increasing or decreasing.
Observe first that for increasing preferences having multiple copies of the same activity is not useful: if there is an individually rational assignment where agents are assigned to multiple copies of an activity, we can reassign these agents to a single copy of this activity without violating individual rationality. Thus, we obtain the following easy corollary to Theorem 5.
Corollary 1
Let (N, A, P) be an instance of \(\mathsf{a\text {}GASP}\) with increasing preferences where \(A^*\) contains at most K activities that are pairwise nonequivalent. Then we can find a maximum individually rational assignment for (N, A, P) in time \(n^K{\text{ poly }}(n)\).
If all preferences are decreasing, we can simply eliminate all \(\infty \)copyable activities. Indeed, consider an instance (N, A, P) of \(\mathsf{a\text {}GASP}\) where some activity \(a\in A^*\) is \(\infty \)copyable. Then we can assign each agent \(i\in N\) such that \((a, 1)\in S_i\) to his own copy of a; clearly, this will only simplify the problem of assigning the remaining agents to the activities.
It remains to consider the case where the agents’ preferences are decreasing, there is a limited number of copies of each activity, and the number of distinct activities is small. While we do not have a complete solution for this case, we can show that in the case of a single kcopyable activity a natural algorithm succeeds in finding a maximum individually rational assignment.
Theorem 6
Given a decreasing instance (N, A, P) of \(\mathsf{a\text {}GASP}\) where \(A^*\) consists of a single kcopyable activity (i.e., \(A^*=\{a_1, \ldots , a_k\}\), and all activities in \(A^*\) are pairwise equivalent), we can find a maximum individually rational assignment in time \(O(n\log n)\).
Proof
Since all activities in \(A^*\) are pairwise equivalent, we can associate each agent \(i\in N\) with a single number \(u_i\in \{0, \ldots , n\}\), which is the maximum size of a coalition assigned to a nonvoid activity that he is willing to be a part of. We will show that our problem can be solved by a simple algorithm. Specifically, we sort the agents in nonincreasing order of \(u_i\)s. From now on, we will assume without loss of generality that \(u_1\ge \cdots \ge u_n\). To form the first group, we find the largest value of i such that \(u_i\ge i\), and assign agents \(1, \ldots , i\) to the first copy of the activity. In other words, we continue adding agents to the group as long as the agents are happy to join. We repeat this procedure with the remaining agents until either k groups have been formed or all agents have been assigned to one of the groups, whichever happens earlier.
Clearly, the sorting step is the bottleneck of this procedure, so the running time of our algorithm is \(O(n\log n)\). It remains to argue that it produces a maximum individually rational assignment. To show this, we start with an arbitrary maximum individually rational assignment \(\pi \) and transform it into the one produced by our algorithm without lowering the number of agents that have been assigned to a nonvoid activity. We will assume without loss of generality that \(\pi \) assigns all k copies of the activity (even though this is not necessarily the case for the algorithm).
First, suppose that \(\pi (i) = a_\emptyset \), \(\pi (j) = a_\ell \) for some \(i<j\) and some \(\ell \in \{1, \ldots , k\}\). Then we can modify \(\pi \) by setting \(\pi (i)=a_\ell \), \(\pi (j)=a_\emptyset \). Since \(i<j\) implies \(u_i\ge u_j\), the modified assignment is individually rational. By applying this operation repeatedly, we can assume that the set of agents assigned to a nonvoid activity forms a contiguous prefix of \(1, \ldots , n\).
Next, we will ensure that for each \(\ell =1, \ldots , k\) the group of agents that are assigned to \(a_\ell \) forms a contiguous subsequence of \(1, \ldots , n\). To this end, let us sort the coalitions in \(\pi \) according to their size, from the largest to the smallest, breaking ties arbitrarily. That is, we reassign the k copies of our activity to coalitions in \(\pi \) so that \(\ell <r\) implies \(\pi ^\ell \ge \pi ^r\). Now, suppose that there exist a pair of players i, j such that \(i<j\), \(\pi (i)=a_\ell \), \(\pi (j)=a_r\), and \(\ell >r\) (and hence \(\pi ^\ell \le \pi ^r\)). We have \(u_j\ge \pi ^r\ge \pi ^\ell \), \(u_i\ge u_j \ge \pi ^r\), so if we swap i and j (i.e., modify \(\pi \) by setting \(\pi (j)=a_\ell \), \(\pi (i) = a_r\)), the resulting assignment remains individually rational. Observe that every such swap increases the quantity \(\Sigma = \sum \nolimits _{t=1}^k\sum \nolimits _{s\in \pi ^t}(s\cdot t)\) by at least 1: prior to the swap, the contribution of i and j to \(\Sigma \) is \(i\ell +jr\), and after the swap it is \(ir+j\ell > i\ell +jr\). Since for any assignment we have \(\Sigma \le kn(n+1)/2\), eventually we arrive to an assignment where no such pair (i, j) exists. At this point, each \(\pi ^\ell \), \(\ell =1, \ldots , k\), forms a contiguous subsequence of \(1, \ldots , n\), and, moreover, \(\ell <r\) implies \(i\le j\) for all \(i\in \pi ^\ell \), \(j\in \pi ^r\).
Now, consider the smallest value of \(\ell \) such that \(\pi ^\ell \) differs from the \(\ell \)th coalition constructed by the algorithm (let us denote it by \(\gamma ^\ell \)), and let i be the first agent in \(\pi ^{\ell +1}\). The description of the algorithm implies that \(\pi ^\ell \) is a strict subset of \(\gamma ^\ell \) and agent i belongs to \(\gamma ^\ell \). Thus, if we modify \(\pi \) by moving agent i to \(\pi ^\ell \), the resulting allocation remains individually rational (since i is happy in \(\gamma ^\ell \)). By repeating this step, we will gradually transform \(\pi \) into the output of the algorithm (possibly discarding some copies of the activity). This completes the proof. \(\square \)
Example 8
(a, 1)  (a, 2)  (a, 3)  (a, 4)  (a, 5)  (a, 6)  (a, 7)  

1  +  +  +  +  +  +  \(\) 
2  +  +  +  +  \(\)  \(\)  \(\) 
3  +  +  +  +  \(\)  \(\)  \(\) 
4  +  +  +  \(\)  \(\)  \(\)  \(\) 
5  +  +  \(\)  \(\)  \(\)  \(\)  \(\) 
6  +  +  \(\)  \(\)  \(\)  \(\)  \(\) 
7  +  \(\)  \(\)  \(\)  \(\)  \(\)  \(\) 
With \(u_i\) being the maximum size of a coalition agent i is willing to be part of, we have \(u_1 \ge \cdots \ge u_7\). The algorithm described in the proof of Theorem 6 starts by assigning agents 1, 2, 3 to the first copy of a. It then assigns agents 4 and 5 to the second copy of a. Finally, agent 6 is assigned to the third copy of a, and agent 7 is assigned to the void activity.
The algorithm described in the proof of Theorem 6 can be extended to the case where we have one kcopyable activity a and one simple activity b, and the agents have decreasing preferences over both activities. For each \(s=1, \ldots , n\) we will look for the best solution in which s players are assigned to b; we will then pick the best of these n solutions. For a fixed s let \(N_s=\{i\in N\mid (b, s)\in S_i\}\). If \(N_s<s\), no solution for this value of s exists. Otherwise, we have to decide which sizes subset of \(N_s\) to assign to b. It is not hard to see that we should simply pick the agents in \(N_s\) that have the lowest level of tolerance for a, i.e., we order the agents in \(N_s\) by the values of \(u^a_i=\max \{j\in N\mid (a,j)\in S_i\}\) from the smallest to the largest, and pick the first s agents. We then assign the remaining agents to copies of a using the algorithm from the proof of Theorem 6. Indeed, any assignment can be transformed into one of this form by swapping agents so that the individual rationality constraints are not broken. It would be interesting to see if this idea can be extended to the case where instead of a single simple activity b we have a constant number of simple activities or a single \(k'\)copyable activity.
We conclude this section by giving an \(O(\sqrt{n})\)approximation algorithm for finding a maximum individually rational assignment in \(\mathsf{a\text {}GASP}\) with a single \(\infty \)copyable activity.
Theorem 7
There exists a polynomialtime algorithm that given an instance (N, A, P) of \(\mathsf{a\text {}GASP}\) where \(A^*\) consists of a single \(\infty \)copyable activity a, outputs an individually rational assignment \(\pi \) with \(\#(\pi )=\Omega (\frac{1}{\sqrt{n}})\#(N, A, P)\).
Proof
We say that an agent i is active in \(\pi \) if \(\pi (i)\ne a_{\emptyset }\); a coalition of agents is said to be active if it is assigned to a single copy of a. We construct an individually rational assignment \(\pi \) iteratively, starting from the assignment where no agent is active. Let \(N^*=\{i\mid \pi (i)=a_{\emptyset }\}\) be the current set of inactive agents (initially, we set \(N^*=N\)). At each step, we find the largest subset of \(N^*\) that can be assigned to a single fresh copy of a without breaking the individual rationality constraints, and append this assignment to \(\pi \). We repeat this step until the inactive agents cannot form another coalition.
Now we compare the number of active agents in \(\pi \) with the number of active agents in a maximum individually rational assignment \(\pi ^*\). To this end, let us denote the active coalitions of \(\pi \) by \(B_1,\ldots ,B_s\), where \(B_1\ge \cdots \ge B_s\). If \(B_1\ge \sqrt{n}\), we are done, so assume that this is not the case. Note that since \(B_1\) was chosen greedily, this implies that \(C\le \sqrt{n}\) for every active coalition C in \(\pi ^*\).
Example 9
(a, 1)  (a, 2)  (a, 3)  (a, 4)  (a, 5)  (a, 6)  (a, 7)  (a, 8)  (a, 9)  (a, 10)  

1  \(\)  \(\)  +  +  \(\)  \(\)  \(\)  \(\)  \(\)  \(\) 
2  \(\)  +  \(\)  +  \(\)  \(\)  \(\)  \(\)  \(\)  \(\) 
3  +  \(\)  \(\)  +  \(\)  \(\)  \(\)  \(\)  \(\)  \(\) 
4  \(\)  \(\)  \(\)  +  \(\)  \(\)  \(\)  \(\)  \(\)  \(\) 
5  \(\)  \(\)  \(\)  +  \(\)  \(\)  \(\)  \(\)  \(\)  \(\) 
6  \(\)  \(\)  \(\)  +  \(\)  \(\)  \(\)  \(\)  \(\)  \(\) 
7  \(\)  \(\)  \(\)  +  \(\)  \(\)  \(\)  \(\)  \(\)  \(\) 
8  \(\)  \(\)  +  \(\)  \(\)  \(\)  \(\)  \(\)  \(\)  \(\) 
9  \(\)  \(\)  +  \(\)  \(\)  \(\)  \(\)  \(\)  \(\)  \(\) 
10  \(\)  +  \(\)  \(\)  \(\)  \(\)  \(\)  \(\)  \(\)  \(\) 
We start by analyzing the behavior of the algorithm from the proof of Theorem 7 for \(k=4\). In the first step, the algorithm assigns a largest possible subset of agents—say {1,2,3,4}— to the first copy of a. But then it is easy to verify that no further agent can be assigned to a copy of a. On the other hand, in the maximum individually rational assignment each of the sets \(\{4,5,6,7\}\), \(\{1,8,9\}\), \(\{2,10\}\), and \(\{3\}\) gets a single copy of a.
Thus, the algorithm yields an assignment with only 4 agents assigned to a nonvoid activity, while the maximum individually rational assignment assigns all 10 agents to a copy of a.
In general, the algorithm assigns the agents \(\{1,\ldots ,k\}\) to the first copy of a, and makes no further assignments. However, the maximum individually rational assignment assigns all of the \(n=k(k+1)/2\) agents to a copy of a: For each \(h\in \{1,\ldots ,k2\}\) the set of agents \(\left\{ 1+\sum \nolimits _{j=h+1}^k j,\ldots ,\sum \nolimits _{j=h}^k j,kh1\right\} \) is assigned to a different copy of a, agent \(k1\) gets his own copy of a, and another copy of a is allocated to \(\{k,\ldots ,2k1\}\).
Example 9 shows that our analysis of the algorithm described in the proof of Theorem 7 is tight up to a constant factor. However, this does not rule out the possibility that an algorithm with a better approximation ratio may exist.
4.3 Nash stability
We have shown that \(\mathsf{a\text {}GASP}\) does not not always admit a Nash stable assignment (Proposition 1). In fact, it is difficult to determine whether a Nash stable assignment exists.
Theorem 8
It is \(\mathsf{NP}\)complete to decide whether \(\mathsf{a\text {}GASP}\) admits a Nash stable assignment.
Proof
We reduce from the problem of deciding whether \(\mathsf{a\text {}GASP}\) admits a perfect assignment. Let (N, A, P) be an instance of \(\mathsf{a\text {}GASP}\). We define an instance \((N', A', P')\) of \(\mathsf{a\text {}GASP}\) by setting \(N' = N \cup \{n+1\}\), \(A' = A \cup \{b\}\), and \(P' = (V_1',\ldots , V_{n+1}')\), where for each \(i \in N\), \(V_i'\) is constructed so that its induced approval vote \(S'_i\) is given by \(S'_i = S_i \cup \{(b,1)\}\) and \(S_{n+1}' = \{(b,2)\}\). By construction, the size of \((N', A', P')\) is polynomial in that of (N, A, P).
Assume that (N, A, P) admits a perfect assignment \(\pi \). Define an assignment \(\pi '\) for \((N', A', P')\) as follows: \(\pi '(i) = \pi (i)\) for all \(i \in N\), and \(\pi '(n+1) = a_{\emptyset }\). Clearly, \(\pi '\) is Nash stable.
Conversely, assume that \((N', A', P')\) admits a Nash stable assignment \(\pi '\). If two or more agents are assigned to b, then \(\pi '\) is not individually rational (because there is only one agent who is willing to share b) and hence not Nash stable. If exactly one agent is assigned to b, by individual rationality it is an agent \(i \in N\), so \(\pi '\) is not Nash stable because \(n+1\) would like to join b. Therefore, no agent is assigned to b. Now, if there is an agent \(i\in N\) with \(\pi '(i) = a_{\emptyset }\), then \(\pi '\) is not Nash stable because i would like to engage in b. Therefore, each agent \(i \in N\) is assigned to a nonvoid activity. Since \(\pi '\) is individually rational, this means that its restriction to N is a perfect assignment for (N, A, P). \(\square \)
However, if agents’ preferences satisfy INC, DEC, or MIX, a Nash stable assignment always exists and can be computed efficiently.
Theorem 9
Given a mixed increasing–decreasing instance (N, A, P) of \(\mathsf{a\text {}GASP}\), we can find a Nash stable assignment in polynomial time.
Proof
Suppose first that agents’ preferences are increasing, i.e., \(A^*=A^+\). We can then start by choosing an arbitrary individually rational assignment \(\pi \) (e.g., \(\pi (i)=a_{\emptyset }\) for all \(i\in N\)). If \(\pi \) is not Nash stable, there exists an agent \(i\in N\) with \(\pi (i)=a_\emptyset \) and an activity \(a_j\in A^*\) such that \((a,\pi ^j+1) \in S_i\). We can then modify \(\pi \) by setting \(\pi (i)=a_j\); clearly, this assignment remains individually rational. If the resulting assignment is still not Nash stable, we can repeat this step. Since at each step the number of agents assigned to the void activity goes down by 1, this process stops after at most n steps.
For decreasing preferences, we proceed as follows. We consider the activities one by one; at step j, we consider activity \(a_j\). Let \(N_j\subseteq N\) be the set of agents that remain unassigned at the beginning of step j. Let \(N_{j, \ell } = \{i\in N_j\mid (a_j, \ell )\in S_i\}\), and set \(k = \max \{\ell \mid N_{j, \ell }\ge \ell \}\). Thus, k is the size of the largest group of currently unassigned agents that can be assigned to \(a_j\). By our choice of k, the set \(N_j\) contains at most k agents that are willing to share \(a_j\) with \(k+1\) or more other agents. We assign all these agents to \(a_j\); if the resulting coalition contains \(\ell <k\) agents, we assign \(k\ell \) additional agents that approve of \((a_j, k)\) to \(a_j\) (the existence of these \(k\ell \) agents is guaranteed by our choice of k). This completes the description of the jth step. Note that no agent that remains unassigned after this step wants to be assigned to \(a_j\): indeed, this activity is currently shared among k agents, so if he were to join, the size of the group that is assigned to \(a_j\) would increase to \(k+1\), and none of the unassigned agents is willing to share \(a_j\) with \(k+1\) other agents. If some agents remain unassigned after n steps, we assign them to the void activity. To see that this assignment is Nash stable, consider an agent i assigned to the void activity. For each activity \(a_j\) he did not want to join the coalition of agents assigned to \(a_j\) during step j. Since the set of agents assigned to \(a_j\) did not change after step j, this is still the case.
For mixed decreasing–increasing instances, we first remove all activities in \(A^+\) and apply our second algorithm to the remaining instance; we then consider the unassigned agents and assign them to activities in \(A^+\) using the first algorithm. \(\square \)
Moreover, the problem of finding a Nash stable assignment that maximizes the number of agents assigned to a nonvoid activity admits an efficient algorithm if \(A^*\) consists of a single simple activity.
Theorem 10
Given an instance (N, A, P) of \(\mathsf{a\text {}GASP}\) with \(A^*=\{a\}\) we can, in polynomial time, find a Nash stable assignment maximizing the number of agents assigned to a nonvoid activity among all Nash stable assignments, or decide that no Nash stable assignment exists.
Proof
For each \(k=n, \ldots , 0\), we will check if there exists a Nash stable assignment \(\pi \) with \(\#(\pi )=k\), and output the largest value of k for which this is the case.
4.4 Core and strict core stability
We have seen that an assignment in the core always exists and can be computed by a simple algorithm (see Sect. 3). We will now consider computational problems associated with the strict core.
We first observe that verifying whether a given assignment is in the core/strict core is easy. Indeed, in both cases, given an assignment \(\pi \), we can iterate over all activities in \(A^*\) and all potential sizes of a deviating coalition. For a fixed \(a_j\in A^*\) and \(k\in N\), let s(j, k) be the number of players in \(\pi ^0\) who approve \((a_j, k)\). If \(s(j, k)\ge k\), then \(\pi \) is not in the core, and if \(s(j, k)< k\) for all \(a_j\in A^*\) and all \(k\in N\), then \(\pi \) is core stable. For the strict core, we check if there are at least \(k\pi ^js(j,k)\) players in \(N{\setminus }(\pi ^j\cup \pi ^0)\) who approve \((a_j, k)\); \(\pi \) is not in the strict core if and only if this condition is satisfied for some \(a_j\in A^*\) and \(k\in N\). This implies, in particular, that deciding whether a given assignment is in the strict core is in NP.
Next, we will show that for decreasing preferences an assignment in the strict core can be computed efficiently, while for increasing preferences this is not the case.
Proposition 5
For every instance of \(\mathsf{a\text {}GASP}\) with decreasing preferences the strict core is nonempty. Moreover, given an instance (N, A, P) of \(\mathsf{a\text {}GASP}\) with decreasing preferences, we can find an assignment in the strict core in polynomial time.
Proof
Fix an instance (N, A, P) of \(\mathsf{a\text {}GASP}\) with decreasing preferences, and consider the algorithm used to construct an assignment in the core (page 11). Let \(\pi \) be the assignment constructed by this algorithm. Assume there is a subset \(E\subseteq N\) with \(E\cap \pi ^0\not =\emptyset \) and an \(a_{j}\in A^{*}\) with \(\pi ^{j} \subset E\) such that \((a_{j},E)\in S_{i}\) for all \(i\in E\). Clearly, we have \(E>\pi ^j\). Let \(E'=E\cap (\pi ^j\cup \pi ^0)\). By construction, \(\pi ^j<E'\le E\). Since all agents have decreasing preferences, for each \(i\in E'\) it holds that \((a_j,E')\in S_{i}\). It follows that when the agents in \(\pi ^j\) were assigned to \(a_j\) by the algorithm, it would have been possible to assign all agents in \(E'\)—and hence more than \(\pi ^j\) agents—to \(a_j\), a contradiction. Thus, the assignment \(\pi \) is in the strict core. Clearly, the algorithm runs in polynomial time. \(\square \)
Theorem 11
It is \(\mathsf{NP}\)complete to decide whether \(\mathsf{a\text {}GASP}\) admits an assignment in the strict core, even when all agents have increasing preferences and all activities are simple.
Proof
We have already argued that this problem is in \(\mathsf{NP}\). In order to prove \(\mathsf{NP}\)hardness, we provide a reduction from the problem of deciding whether a given instance of \(\mathsf{a\text {}GASP}\) with increasing preferences and simple activities admits a perfect assignment (this problem is NPcomplete by Theorem 1).
Suppose that \(\pi \) is a perfect assignment for (N, A, P). Then we can set \(\pi '(i)=\pi (i)\) for \(i\in N\) and \(\pi '(n+1)=\pi '(n+2)=c\) to obtain a perfect assignment \(\pi '\) for \((N',A',P')\); clearly, a perfect assignment is in the strict core.
On the other hand, suppose that \(\pi '\) is in the strict core of \((N',A',P')\). If \(\pi '(n+2)\ne c\), then \(\pi '(n+2)=a_{\emptyset }\). Thus, no agent can be assigned to c, because \(\pi '\) is individually rational. Hence, for \(E=\{n+1,n+2\}\) we have \(\{i\in N'\mid \pi '(i)=c\} \subset E\), \((c,E)\in S'_{i}\) for \(i\in E\), \(E\cap \pi ^0\ne \emptyset \), which violates the strict core condition. It follows that \(\pi '(n+2)=c\).
Since \(\pi '\) is individually rational and \(S_{i}^{\downarrow c}=\emptyset \) for all \(i\in N\), this means that \(\pi '(n+1)=c\). Consequently, no agent can be assigned to b under \(\pi '\), and hence \(\pi '(i)\not \in \{b,c\}\) for all \(i\in N\). Now, suppose that for some \(i\in N\) we have \(\pi '(i)=a_{\emptyset }\). Then, for \(\tilde{E}=N\cup \{n+1\}\) we have \(\{i\in N'\mid \pi '(i)=b\}\subset \tilde{E}\), \((b,\tilde{E})\in S'_{i}\) for all \(i\in \tilde{E}\), and \(\tilde{E}\cap \pi ^0\ne \emptyset \). Again, this is a contradiction with the fact that \(\pi '\) is in the strict core. Hence, for all \(i\in N\) we must have \(\pi '(i)\ne a_{\emptyset }\), i.e., \(\pi '_{N}\) is a perfect assignment for (N, A, P). \(\square \)
For a single simple activity, Proposition 3 shows that finding an assignment in the strict core of a given instance of \(\mathsf{a\text {}GASP}\) is easy. In contrast, for a single \(\infty \)copyable activity, this problem is hard. This can be shown by adapting the reduction in the proof of Theorem 4: it can be verified that for instances of \(\mathsf{a\text {}GASP}\) constructed in that proof it holds that an assignment is in the strict core if and only if it is perfect. We thus obtain the following corollary.
Corollary 2
It is \(\mathsf{NP}\)complete to decide whether \(\mathsf{a\text {}GASP}\) admits an assignment in the strict core, even when \(A^*\) consists of a single \(\infty \)copyable activity a and for every \(i\in N\) we have \(S_i^{\downarrow a}\le 2\).
5 Conclusions and future work
Summary of results
perfect  Nash  strict core  

Unrestricted  NPc (Theorem 1)  NPc (Theorem 8)  NPc (Theorem 11) 
Increasing  NPc (Theorem 1)  P (Theorem 9)  NPc (Theorem 11) 
Decreasing  NPc (Theorem 2)  P (Theorem 9)  P (Proposition 5) 
Single activity (s.)  P (Proposition 4)  P (Theorem 10)  P (Proposition 3) 
Single activity (c.)  NPc (Theorem 4)  ?  NPc (Corollary 2) 

relaxing the anonymity assumption and have agents express their preferences over pairs consisting of an activity and a coalition, as done in the work of Anshelevich and Sekar (2014);

instead of focusing on dichotomous preferences, have agents express rankings of the alternatives (or utility functions).
Footnotes
 1.
Some of the coauthors of this paper had to deal with this problem when coorganizing a Dagstuhl seminar.
 2.
The terminological similarity with the notion of perfect partition in a hedonic game (Aziz et al. 2013) is intentional; in a hedonic game a perfect partition assigns each agent to his most preferred coalition, whereas in an \(\mathsf{a\text {}GASP}\) a perfect assignment maps each agent to one of her approved alternatives.
Notes
Acknowledgements
This research was supported by National Research Foundation (Singapore) under Research Fellowship NRF200908, by ERC grant agreement number 639945, by the ANR Project CoCoRICoCoDec and by the Austrian Science Fund (P23724G11 and P23829N13). This project was initiated during the Dagstuhl seminar 12101 “Computation and Incentives in Social Choice”, and the authors are very grateful to Dagstuhl for providing a great research environment and inspiration for this work. We thank Craig Boutilier, Vincent Iehlé and Michel Le Breton for helpful comments. Part of this work was done when the second author was visiting Université ParisDauphine. We thank the reviewers and the associate editor for their helpful comments.
Supplementary material
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