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Copula Discrepancy: Benchmarking Dependence Structure

Machine Learning 2025-12-30 v3 Machine Learning

Abstract

We study a simple statistic for benchmarking how well a sample preserves a known bivariate dependence structure. Given a target copula family (Clayton or Gumbel) and parameter θP\theta_P, the Copula Discrepancy (CD) compares the target Kendall's tau τ(θP)\tau(\theta_P) with the Kendall's tau implied by a parameter θ^\hat{\theta} fitted to the sample within the target family, i.e., τ(θP)τ(θ^)|\tau(\theta_P)-\tau(\hat{\theta})|. We develop a moment-based version, prove consistency, asymptotic normality, and robustness results under i.i.d.\ sampling, and use an MLE-based version empirically for greater power against tail-structure misspecification. Building on this, we define two information-theoretic copula summaries, a copula KL divergence (CKL) and a copula entropy gap (CED), and establish basic consistency and central limit results for their plug-in estimators. In controlled experiments, CD reliably separates on-target and off-target copulas with matched Kendall's τ\tau, provides a dependence-aware signal for tuning SGLD step sizes where Effective Sample Size favors overly aggressive (and biased) settings, and remains stably nonzero under deliberate tail-dependence mismatch where a naive τ\tau-based diagnostic fails; CKL and CED offer a complementary Shannon-style view that echoes these findings. Timing benchmarks show that both CD variants incur only millisecond-level overhead over the tested range and exhibit near-linear empirical scaling in sample size, providing a lightweight, dependence-focused complement to quadratic-cost omnibus discrepancies such as the Kernel Stein Discrepancy (KSD).

Keywords

Cite

@article{arxiv.2507.21434,
  title  = {Copula Discrepancy: Benchmarking Dependence Structure},
  author = {Agnideep Aich and Ashit Baran Aich},
  journal= {arXiv preprint arXiv:2507.21434},
  year   = {2025}
}
R2 v1 2026-07-01T04:23:17.078Z