Abstract
In this paper, we compare two numerical methods for approximating the probability that the sum of dependent regularly varying random variables exceeds a high threshold under Archimedean copula models. The first method is based on conditional Monte Carlo. We present four estimators and show that most of them have bounded relative errors. The second method is based on analytical expressions of the multivariate survival or cumulative distribution functions of the regularly varying random variables and provides sharp and deterministic bounds of the probability of exceedance. We discuss implementation issues and illustrate the accuracy of both procedures through numerical studies.
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Acknowledgments
This work was partially supported by the Natural Sciences and Engineering Research Council of Canada (Cossette: 054993; Marceau: 053934), by the Chaire en actuariat de l’Université Laval (Cossette and Marceau: FO502323), and by the “Laboratoire de Sciences Actuarielle et Financière” (Université Lyon 1).
The authors wish to thank an anonymous referee for her/his valuable comments and suggestions which significantly improved the paper.
This work was partly done while Hélène Cossette and Etienne Marceau visited the “Institut de Science Financière et d’Assurances” and the “Laboratoire de Sciences Actuarielle et Financière”. The warm hospitality of the members of the “Institut” and the “Laboratoire” is gratefully acknowledged.
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Appendices
Appendix A: Proofs for the Conditional Distributions of Propositions 3 and 15
1.1 A.1 Proof of Proposition 3
From the conditional cumulative distribution function \(F_{U_{j}|Z,U_{j-1}, {\ldots } ,U_{1}}(u_{j}|z,u_{j-1},{\ldots } ,u_{1})\) with j = 1, we derive the conditional cumulative distribution function \(F_{U_{1}|Z}\)
for z < u1 < 1. By using the expression of the probability density function of Z in Proposition 2, and because the marginal probability density function of U1 is 1 on (0,1), the conditional probability density function of Z|U1 is given by
for 0 < z < u1. The conditional cumulative distribution function of Z is then obtained as follows:
Note that \(\lim \limits _{v\rightarrow \infty } \left (v-{\Phi }^{\leftarrow } (u_{1})\right )^{j}{\Phi }^{(j)}(v)= 0\) for all j = 1,…, n − 2. The conditional cumulative distribution function of Z given U1 is derived iteratively:
for z ∈ (0, u1).
1.2 A.2 Proof of Proposition 15
The multivariate survival distribution function of Y = (Y1,..., Yn) is given by
and therefore we deduce that
We now calculate the derivative of FY(y1,…, yn) with respect to each and every component of y−i. Among the 2n elements of the previous sum, there will only be two elements that will be different from 0 after taking the derivatives (n − 1) times. Hence we get
Let us now note that the joint probability density function of Y−i is given by
We derive that the conditional cumulative distribution function of \( Y_{i}^{\ast } =\left (Y_{i}|\mathbf {Y}_{-i}=\mathbf {y}_{-i}\right ) \) is finally characterized by
Appendix B: Proofs on the Asymptotic Properties of the Estimators
1.1 B.1 Proof of Proposition 11
Let us first recall that the relative error of an unbiased estimator Z(s) is defined by \(e(Z(s))=\sqrt {\mathbb {E[}Z^{2}(s)]}/z(s)\). Therefore \( e^{2}(Z(s))= 1+\mathbb {V}ar(Z(s))/z^{2}(s)\). Let us now remark that
It follows that
which is enough to conclude that the relative error is bounded as s tends to infinity. The variance of \(Z_{NR1}^{Y}(s)\) can be bounded similarly and the same conclusion holds.
1.2 B.2 Proof of Proposition 14
Because Φ(n− 2) is differentiable, the survival distribution function of the radius R is
Using the the fact that the function Φ(x) = x−βlΦ(x) is a regularly varying function at infinity, we have, for j = 1,…, (n − 1),
and we can deduce that
We now define \(g(r)=\sum \limits _{i = 1}^{n}\overline {F}_{i}^{\leftharpoonup } ({\Phi } (r))\) and \({L_{0}^{Y}}(s)=\inf \{r\in \mathcal {R}^{+}:g(r)\geq s\}\). Because \(\overline {F}^{\leftarrow } \) and Φ are both non-increasing functions, we have
for all \(\mathbf {W}\in \mathfrak {s}_{n}\), and then L0Y(s) ≤ LY(W, s) for all \(\mathbf {W}\in \mathfrak {s}_{n}\). Moreover, from the definiton of \({L_{0}^{Y}}(s)\), we have
and
Thus, with \(\lim \limits _{s\rightarrow \infty } {L_{0}^{Y}}(s)=\infty \), the second moment of \(Z_{NR2}^{Y}(s)\) is bounded in the following way
and the result follows.
1.3 B.3 Proof of Proposition 18
We start with an inequality between Φ and FR. Since Φ is an n-monotone function, (n − 1)-times differentiable and since the random variable R has the cumulative distribution function given in Theorem 7, we have
Indeed, because Φ is non-increasing function then there exists μ ∈ (ax, x) such that
Since Φ is an n-monotone function, (− 1)(n− 2)Φ(n− 2)(x) is a convex function, and (− 1)(n− 1)Φ(n− 1)(x) is a non-increasing function. This implies that (− 1)(n− 1)Φ(n− 1)(μ) ≥ (− 1)(n− 1)Φ(n− 1)(x) because μ ≤ x. Thus we have
and
To prove Proposition 18, first note that \(Z_{NR3,2}^{Y}(s)\) is bounded by \(\bar {F}_{R}\left (L_{\lambda }^{Y}(\mathbf {W},s)\right ) \) since
Moreover, from the definition of \(\overline {F}_{R}\left (L_{\lambda }^{Y}(\mathbf {W},s)\right ) \) and \(M_{2}\{\left ({\Phi }^{\leftarrow } (\bar {F} _{i}(\lambda s))/W_{i}\right )_{i = 1,{\ldots } ,n}\}\), there exists two indexes i1, i2 ∈ 1, 2,…, n such that
Therefore,
implies
Appling (15) with \(a=W_{i_{j}}\), j = 1, 2 and \( x=L_{\lambda }^{Y}(\mathbf {W},s)\), we have
For j = 1, 2 we have \(\overline {F}_{i_{j}}(\lambda s)\!\sim \! \lambda ^{-\alpha _{i_{j}}}\overline {F}_{i_{j}}(s)\) as s tends to ∞, and \(\overline {F} _{i_{j}}(s)\!\leq \! z(s)\), which yields
1.4 B.4 Proof of Proposition 21
We have
If we estimate this probability conditionally on \(\mathbf {W}\in \mathfrak {s} _{n}\) by the same method of estimating \(Z_{NR3,2}^{Y}(s)\), the value of λ in this case is \(\frac {1-\kappa } {n-1}\in (0,1/n)\), the second moment of this estimator is upper bounded by \(2^{2n-2}\left (\frac {1-\kappa } {n-1}\right )^{-2\alpha _{n}}\times \lbrack z^{Y}(s)]^{2}\). Thus, the variance of \(Z_{NR3,2}^{Y}(s)\) is bounded by
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Cossette, H., Marceau, E., Nguyen, Q.H. et al. Tail Approximations for Sums of Dependent Regularly Varying Random Variables Under Archimedean Copula Models. Methodol Comput Appl Probab 21, 461–490 (2019). https://doi.org/10.1007/s11009-017-9614-z
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DOI: https://doi.org/10.1007/s11009-017-9614-z
Keywords
- Tail approximation
- Archimedean copulas
- Dependent regularly varying random variables
- Conditional Monte Carlo simulation
- Numerical bounds
Mathematics Subject Classification (2010)
- 68U20
- 65C05
- 60G70