Nonparametric tests of independence using copula-based Renyi and Tsallis divergence measures

Keywords: ‎Independence test, Renyi divergence, Tsallis divergence, Copula density, Probit-transformation

Abstract

‎We introduce new nonparametric independence tests based on R\'enyi and Tsallis divergence measures and copula density function‎. ‎These tests reduce the complexity of calculations because they only depend on the copula density‎. ‎The copula density estimated using the local likelihood probit-transformation method is appropriate for the identification of independence‎. ‎Also‎, ‎we present the consistency of the copula-based R\'enyi and Tsallis divergence measures estimators that are considered as test statistics‎. ‎A simulation study is provided to compare the empirical power of these new tests with the independence test based on the empirical copula‎. ‎The simulation results show that the suggested tests outperform in weak dependency‎. ‎Finally‎, ‎an application in hydrology is presented‎.

Author Biographies

Morteza Mohammadi, Department of Statistics, University of Zabol, Zabol, IRAN
Assistant Professor, Department of Statistics, Faculty of Sciences, University of Zabol, Zabol, Iran
Mahdi Emadi, Department of Statistics‎, ‎Ferdowsi University of Mashhad‎, ‎Mashhad‎, ‎Iran
Associate Professor of Department of Statistics, Faculty of Mathematical Sciences, Ferdowsi University of Mashhad, Mashhad, Iran

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Published
2023-08-05
How to Cite
Mohammadi, M., & Emadi, M. (2023). Nonparametric tests of independence using copula-based Renyi and Tsallis divergence measures. Statistics, Optimization & Information Computing, 11(4), 949-962. https://doi.org/10.19139/soic-2310-5070-1691
Section
Research Articles