The probabilistic no miracles argument
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Abstract
This paper develops a probabilistic reconstruction of the No Miracles Argument (NMA) in the debate between scientific realists and antirealists. The goal of the paper is to clarify and to sharpen the NMA by means of a probabilistic formalization. In particular, I demonstrate that the persuasive force of the NMA depends on the particular disciplinary context where it is applied, and the stability of theories in that discipline. Assessments and critiques of “the” NMA, without reference to a particular context, are misleading and should be relinquished. This result has repercussions for recent antirealist arguments, such as the claim that the NMA commits the base rate fallacy (Howson (2000), Magnus and Callender (Philosophy of Science, 71:320–338, 2004)). It also helps to explain the persistent disagreement between realists and antirealists.
Keywords
Scientific realism No miracles argument Bayesian epistemology Base rate fallacy Stability of scientific theories1 Introduction
The debate between scientific realists and antirealists is one of the classics of philosophy of science, comparable to a soccer match between Brazil and Argentina. Realism comes in different varieties, e.g., metaphysical, semantic and epistemological realism (see Chakravartty (2011), for a survey). In this paper, I focus on the epistemological thesis that we are justified to believe in the truth of our best scientific theories, and that they constitute knowledge of the external world (Boyd 1983; Psillos 1999, 2009). In this view, the existence of a mindindependent world (metaphysical realism) and the reference of theoretical terms to mindindependent entities (semantic realism) is usually presupposed—the real question concerns the epistemic status of our best scientific theories.
A major player in this debate is the No Miracles Argument (NMA). It contends that the truth of our best scientific theories is the only hypothesis that does not make the astonishing predictive, retrodictive and explanatory success of science a mystery (Putnam 1975, 73). If our best scientific theories did not correctly describe the world, why should we expect them to be successful? On the other hand, since the truth of our best theories is an excellent explanation of their success, we should accept the realist hypothesis: our best scientific theories are true and constitute knowledge of the world.
It is not entirely clear whether the NMA is an empirical or a superempirical argument. As an argument from past and present success of our best scientific theories to their truth, it involves two major steps: the step from observed success to rational belief in empirical adequacy, and the step from rational belief in empirical adequacy to rational belief in truth (see Fig. 1). The first of them is an empirical inference, the second most probably not: ordinary empirical evidence cannot distinguish between different theoretical structures that yield the same observable consequences.
Much philosophical discussion has been devoted to the second step of the NMA (e.g., Psillos 1999; Lipton 2004; Stanford 2006), which seems in greater need of a philosophical defense. After all, the realist has to address the problems of underdetermination of theory by evidence and the existence of unconceived alternatives. But also the first step of the NMA is far from trivial, and strengthening it against criticism is vital for the scientific realist. For instance, Laudan (1981) has argued that there have been lots of successful, but nonreferring scientific theories. If Laudan were right, then the entire NMA would break down, even if objections to the second step could be countered successfully.
Arguments against the first step of the NMA do not only threaten full scientific realists, but also structural realists (Worrall 1989) and some varieties of antirealism that stick out their neck. One of them is Bas van Fraassen’s constructive empiricism (van Fraassen 1980; Monton and Mohler 2012). Proponents of this view deny that we have reasons to believe that our best scientific theories are literally true. However, they affirm that we are justified to believe in the observable parts of our best theories. Thus they are also affected by criticism and defense of the first step of the NMA.
Hence, the first step of the NMA does not draw a sharp divide between realists and antirealists. Rather, the debate takes place between those who derive epistemic commitments from the success of science, and those who deny them. For convenience, we stick to the traditional terminology and refer to the first group as “realists” and to the second group as “antirealists”.
The paper aims to show the realist and antirealist standpoints can be reconciled with probabilistic rationality, and Bayesian rationality in particular. The paper assumes that rationally believed propositions should also be probable (for discussion of this thesis, see e.g., Leitgeb 2014). I set up a simple probabilistic model of the NMA and use it to underline a recent criticism by Colin Howson (2000) and Howson (2013) that the NMA falls prey to the base rate fallacy (Section 2). I then develop a refined probabilistic model of the NMA where this criticism is addressed, and where the stability of scientific theories and the existence of relevant alternatives are accommodated (Section 3). By assigning a crucial role to the nature and history of the relevant scientific discipline, this model allows for a more nuanced assessment of the NMA. The paper concludes with a short discussion of the scope of the NMA, and a plea for contextsensitive assessment of its validity (Section 4).
2 A probabilistic no miracles argument
The NMA is sometimes understood as a general argument for believing in the truth of our best scientific theories. In this paper, we restrict it to a particular scientific theory T which is predictively and explanatorily successful in a certain scientific domain. Since we only investigate arguments for the empirical adequacy of T, we introduce a propositional variable H—the hypothesis that T is empirically adequate. See Fig. 2 for a simple Bayesian network representation of the dependence between H and the propositional variable S that represents the empirical success of T.
To the above argument, antirealists object that the inequality p(HS)>p(H) falls short of establishing the realist claim. We are primarily interested in whether H is sufficiently probable given S, not in whether S raises the probability of H. After all, the increase in probability could be negligibly small. The result p(HS)>p(H) does not establish that p(HS) is beyond a critical threshold, e.g., a probability of 1/2.
More specifically, it has been argued that the NMA commits the base rate fallacy (Howson 2000; Magnus and Callender 2004). This is an unwarranted type of inference that frequently occurs in medicine. Consider a highly sensitive medical test which yields a positive result. On the other hand, the medical condition in question is very rare, that is, the base rate of the disease is very low. In such a case, the posterior probability of the patient having the disease, given the test, will still be quite low. Nonetheless, medical practitioners tend to disregard the low base rate and to infer that the patient really has the disease in question (e.g., Goodman 1999).
Antirealists claim that NMA is built on a base rate fallacy: from the high value of p(SH) (“the empirical adequacy of T explains its success”) and the low value of p(S¬H) (“success of T would be a miracle if T were not empirically adequate”), rational belief in H (“T is empirically adequate”) is inferred. The probabilistic model of the NMA demonstrates that we need additional assumptions about p(H) to warrant this inference. In the absence of such assumptions, the NMA does not entitle us to accept T as empirically adequate.
What do these considerations show? First, they expose that the NMA, reconstructed as a probabilistic inference to the posterior probability of H, is essentially subjective. After all, any weight of evidence in favor of H can be counterbalanced by a sufficiently skeptical prior, that is, a sufficiently low value assigned to p(H). The antirealist contends that the realist needs to provide convincing reasons why p(H) should not be arbitrarily close to zero, and that such reasons will typically presuppose realist inclinations. This is a problem for those realists who claim that the NMA is an objective argument in favor of scientific realism. Howson (2013, 211) concludes that due to the dependence on unconstrained prior degrees of belief, the NMA is, “as a supposedly objective argument, […] dead in the water”. See also Howson (2000, ch. 3), Lipton (2004, 196–198), and Chakravartty (2011).
Second, the antirealist may argue that empirical adequacy is not required for predictive success. Every now and then, science undergoes radical discontinuities: it is discovered that central terms in scientific theories do not refer, that theories fail to apply outside a particular domain, etc. The theories which supersede them are empirically distinct. Why should our currently best theory T _{ n }=T not suffer the same fate as it predecessors T _{1},…,T _{ n−1} which proved to be empirically inadequate although they once were the best scientific theory? This is basically Laudan’s argument from Pessimistic MetaInduction (PMI): “I believe that for every highly successful theory in the past of science which we now believe to be a genuinely referring theory, one could find half a dozen successful theories which we now regard as substantially nonreferring” (Laudan 1981, 35). See (Tulodziecki, unpublished) for a recent case study.
PMI affects the values of p(S¬H) and p(H) as follows: On the one hand, history teaches us that there have often been false theories that explained the data well (and were superseded later). In other words, empirically inadequate theories can be highly successful and p(S¬H) need not be that low. Second, the fact that T _{1},…,T _{ n−1} stand refuted, plus possible continuities and structural similarities between those theories and T _{ n }=T, suggest, by virtue of an inductive inference, that T may ultimately suffer the same fate, lowering the probability that T is empirically adequate.
Let us check these arguments in a numerical analysis of the probabilistic NMA. Conceding a bit to the realist, we set s:=p(SH)=1: if theory T is empirically adequate, then it is also successful.^{2} Furthermore, define s ^{′}:=p(S¬H) and let h:=p(H) be the prior probability of H. We now ask the question: for which values of s ^{′} and h is the posterior probability of H, p(HS), greater than 1/2? That is, when would it be more plausible to believe that T is empirically adequate than to deny it? This condition is arguably a minimal requirement for the claim that the success of T entitles us to rational belief in its empirical adequacy.
However, inequality (2) is not easy to satisfy. As mentioned above, false theories and models often make accurate predictions and perform well on other cognitive values (see Frigg and Hartmann 2012, for an overview). Classical examples that are still used today involve Newtonian mechanics, the LotkaVolterra model from population biology (e.g., Weisberg 2007) and Rational Choice Theory. These theories may be false, but they are definitely useful and successful. Given the frequency of such theories in science, we may estimate s ^{′}=1/4—the precise value matters less than the order of magnitude. To satsify inequality (2) and to make the NMA work, we would then require that p(H)∈[1/3,1]! In other words, the NMA only flies for theories with a substantial prior probability of being empirically adequate. What is more, for a “mildly skeptical prior” such as p(H)=0.05, the value of s ^{′} would have to be in the range [0,0.05]. This amounts to making the assumption that only the empirical adequacy (or truth) of a scientific theory can explain its success. But this is essentially a realist premise which the antirealist would refuse to accept. She could point to the existence of unconceived alternatives (Stanford 2006, ch. 6), the explanatory successes of false theories, etc. In other words: the simple probabilistic model of the NMA demonstrates that (1) to the extent that the NMA is valid, its premises presuppose realist inclinations; (2) to the extent that the NMA builds on premises that are neutral between the realist and the antirealist, it fails to be valid.
Are things thus hopeless for the realist who wants to convince the antirealist that the NMA is a good argument? Does “all realistic hope of resuscitating the [no miracles] argument [fail]”, as Howson (2013, 211) writes? Perhaps not necessarily so. The next section develops another, more sophisticated probabilistic model whose results are more friendly toward the realist position.
3 A new model of the no miracles argument
So far, the probabilistic NMA only took the predictive and explanatory success of T as evidence for the realist position. But perhaps, different kinds of evidence bear on the argument, too. For example, Ludwig Fahrbach (2009, 2011) has argued that the stability of scientific theories in recent decades favors scientific realism. In this section, we show how such arguments could be part of a probabilistic NMA. We do not want to take a stand on the historical correctness of Fahrbach’s observations: rather, we would like to demonstrate how such observations can in principle affect the NMA.
Fahrbach’s argument is based on scientometric data. He observes an exponential growth of scientific activity, with a doubling of scientific output every 20 years (Meadows 1974). He also notes that at least 80 % of all scientific work has been done since the year 1950 and observes that our fundamental scientific theories (e.g., the periodic table of elements, optical and acoustic theories, the theory of evolution, etc.) were stable during that period of time. That is, they did not undergo rejection or major conceptual change. Laudan’s examples in favor of PMI, on the other hand, all stem from the early periods of science: the caloric theory of heat, the ether theory in physics, or the humoral theory in medicine.
For giving a fair assessment of PMI, we have to take into account the amount of scientific work done in a particular period. This implies, for example, that the period 1800–1820 should receive much less weight than the period 1950–1970. According to Fahrbach, PMI fails because most “theory changes occurred during the time of the first 5 % of all scientific work ever done by scientists” (Fahrbach 2011, 149). If PMI were valid, we should have observed more substantial theory changes or scientific revolutions in the recent past. However, although the theories of modern science often encounter difficulties, revolutionary turnovers do not (or only very rarely) happen. According to Fahrbach, PMI stands refuted—or at the very least, it is not more rational than optimistic metainduction.
The factual correctness of Fahrbach’s observations may be disputed, and his model is certainly very simplified. Yet, it deserves to be taken seriously, particularly with respect to the implications for the NMA. In this paper, I explore if observations of longterm stability expand the set of circumstances where the NMA holds. To this end, let us refine our probabilistic model of the NMA.
As before, the propositional variable H expresses the empirical adequacy of theory T, and S denotes the predictive, retrodictive and explanatory success of T. Similar to Dawid et al. (2015), we introduce a integervalued random variable A that expresses the number of satisfactory alternatives to T, including unconceived theories. In the individuation of alternatives, we stick with the Dawid et al. paper: that is, we demand that alternative theories satisfy a set of (contextdependent) theoretical constraints \(\mathcal {C}\), are consistent with the currently available data \(\mathcal {D}\), and give distinguishable predictions for the outcome of some set \(\mathcal {E}\) of future experiments. In line with our focus on empirical adequacy rather than truth, we do not distinguish between empirically equivalent theories with different theoretical structures. Finally, major theory change in the domain of T is denoted by variable C, and absence of change and theoretical stability by ¬C. “Theory change” is understood in a broad sense, including scenarios where rivalling theories emerge and end up coexisting with T.
 A0
The variables A, C, H and S satisfy the conditional independencies in the Bayesian Network of Fig. 4.

Denote by a _{ j }:=p(A=j) the probability that there are exactly j (not necessarily discovered) alternatives to T that satisfy the theoretical constraints \(\mathcal {C}\), are consistent with current data \(\mathcal {D}\) and give definite predictions for future experiments \(\mathcal {E}\), etc.^{3}

Denote by h _{ j }:=p(HA=j) the probability that T is empirically adequate if there are exactly j alternatives to T.

As before, denote by s:=p(SH) and s ^{′}:=p(S¬H) the probability that T is successful if it is (not) empirically adequate.

Denote by c _{ j }:=p(¬CA=j,S) the probability that no substantial theory change occurs if T is successful and there are exactly j alternatives for T.
We now make some assumptions on the values of these quantities.
 A1
If T is empirically adequate then it will be successful in the long run: s=p(SH)=1.^{4}
 A2
The empirical adequacy of T is no more or less probable than the empirical adequacy of an alternative which satisfies the same set of theoretical and empirical constraints: h _{ j }:=p(HA _{ j })=1/(j+1). Scientists are indifferent between theories which satisfy the same set of theoretical and empirical constraints.
 A3
The more satisfactory alternatives are in principle accessible to the scientists, the less likely is an extended period of theoretical stability. In other words, c _{ j }:=p(¬CA=j,S) is a decreasing function of j. For convenience, we choose c _{ j }=1/(j + 1).
 A4Assume that T is our currently best theory and we happen to find a satisfactory alternative T ^{′}. Then, the probability of finding yet another alternative T ^{″} is the same as the probability of finding T ^{′} in the first place. Formally:In other words, Eq. 4 expresses the idea that the number of known alternatives does not, in itself, raise or lower the probability of finding another alternative.$$ p(A>jA \ge j) = p(A>j+1A \ge j+1) \; \forall j \ge 0. $$(4)
Note that A0–A4 are equally plausible for the realist and the antirealist. In other words, no realist bias has been incorporated into the assumptions. We can now show the following proposition (proof in the Appendix):
Proposition 1
If a _{0} >0, then A4 is equivalent to the requirement a _{ j } :=a _{0} ⋅(1−a _{0} ) ^{ j }.
These results are very different from the ones in Section 2. With the hyperplane z=0.5 dividing the graph into a region where T may be accepted and a region where this is not the case, we see that the scope of the NMA has increased substantially compared to Fig. 3. For instance, a _{0}>0.1 suffices for a posterior probability greater than 1/2, even if the value of s ^{′} is very high. This is a striking difference to the previous analysis where way more optimistic values had to be assumed in order to make the NMA work.
To deliver a comprehensive picture and to show the robustness of our claims, we calculate the degree of confirmation for all four confirmation measures. All measures are normalized such that a value of zero corresponds to neither confirmation nor disconfirmation. In addition, d(H,E) and z(H,E) only take values between 1 and 1.
All in all, our model shows that a probabilistic NMA need not be doomed. Its validity depends crucially on the properties of the disciplinary context where it operates in. This involves the existence of satisfactory alternatives and whether or not the discipline has been in a long period of theoretical stability. Of course, our model makes simplifying assumptions, but unlike those in Section 2, they do not carry a realist bias. This allows for a more nuanced and contextsensitive assessment of realist claims.
4 Conclusions
This paper has investigated scope and limits of the No Miracles Argument (NMA) when formalized as a probabilistic argument. In the simple probabilistic model of the NMA, we have confirmed Howson’s (2000, 2013) verdict that it does not hold water as an objective argument: too much depends on the choice of the prior probability p(H), assuming what is supposed to be shown. We have supported this diagnosis by a detailed analysis of the probabilistic mechanics of NMA.
However, not all is lost for the NMA. We have developed a probabilistic model of the NMA where additional evidence, such as the stability of scientific theories, can be accommodated. This model also conceptualizes the possible alternatives to the theory in question. Using this model, scientific realism can be defended with much weaker assumptions than in the simple probabilistic version of the NMA. While contextsensitive assumptions are required in this version of the NMA, their relative weakness leaves open the possibility of a coherent, noncircular realist position in philosophy of science. See also (Dawid and Hartmann, unpublished).
I would like to stress that the contextsensitive nature of the NMA is not a vice, but a virtue. True, contextsensitive elements undermine the persuasive force of the NMA for those who do not already share realist inclinations. But when there is little stability in our currently best theories, or when empirically successful alternatives abound, there is nothing to feed realist intuitions in the first place. Hence it is natural that contextual considerations determine when the NMA is valid and when it isn’t.
Our analysis in Section 3 has shown how much depends on the stability of scientific theories in order to make the NMA fly. More research is needed into which areas of science have been theoretically stable. It may be argued that scientific theories of the recent past remained stable on the surface, e.g., in the basic assumptions they make, but that central concepts tacitly underwent major meaning shifts. Evolutionary biology is such a case in question: while basic principles such as the causal power of natural selection to bring about evolutionary change have been unchanged, the meaning of concepts such as natural selection, fitness, and selective environments has been fiercely debated (Lloyd 2014).
All this demonstrates that conceptualizations of the NMA as a general argument for scientific realism are mistaken. Instead of reading NMA as a “wholesale argument” for scientific realism that is valid across the board, we should understand it as a “retail argument” (Magnus and Callender 2004), that is, as an argument that may be strong for some scientific theories and weak for others.
For philosophers like myself, who are not committed to a particular position in the debate between realists and antirealists, the probabilistic reconstruction of the NMA offers the chance to understand the argumentative mechanics behind the realist intuition, to better appreciate the contextdependency of the NMA, and to critically evaluate the merits of realist and antirealist standpoints. The realist argument is based on contexts where theories are stable and there are few potential explanations of empirical success. Such circumstances favor the NMA. The antirealist objections are grounded on those case studies where scientific theories have been volatile or one of our assumptions A0–A4 is implausible. The probabilistic reconstruction of the NMA can thus explain and guide the strategies that realists and antirealists pursue when defending their positions.
Footnotes
 1.
See Hartmann and Sprenger (2010) for an introduction to Bayesian epistemology with applications to topics in philosophy of science, such as explicating degree of confirmation.
 2.
Note that empirical adequacy does not guarantee predictive success: e.g., if T is a lowlevel theory with many parameters to be estimated simultaneously, T may make less accurate predictions than an empirically inadequate, but simpler theory (Forster and Sober 1994).
 3.
It is assumed that there are only finitely many alternative theories that satisfy these quite restrictive specifications. However, the number of alternatives may be arbitrarily large. See Dawid et al. (2015) for more discussion of that assumption.
 4.
The formulation p(SH)=1−𝜖 is more cautious, but this not change the qualitative results and only complicates the calculations.
Notes
Acknowledgments
I would like to thank Peter Brössel, Matteo Colombo, Richard Dawid, Stephan Hartmann, Margaret Morrison, Dana Tulodziecki, two anonymous referees of this journal, and audiences in Bochum, Munich and Tilburg for their helpful feedback. This research was financially supported by the Netherlands Organisation for Scientific Research (NWO) through Vidi grant no. 27620023, and the European Research Council (ERC) through Starting Investigator grant no. 640638, “Making Scientific Inferences More Objective”.
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