Nonparametric Entropy-Based Tests of Independence Between Stochastic Processes |
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Authors: | Marcelo Fernandes Breno Néri |
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Affiliation: | 1. Department of Economics , Queen Mary, University of London , London, UK m.fernandes@qmul.ac.uk;3. Department of Economics , New York University , New York, New York, USA |
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Abstract: | This article develops nonparametric tests of independence between two stochastic processes satisfying β-mixing conditions. The testing strategy boils down to gauging the closeness between the joint and the product of the marginal stationary densities. For that purpose, we take advantage of a generalized entropic measure so as to build a whole family of nonparametric tests of independence. We derive asymptotic normality and local power using the functional delta method for kernels. As a corollary, we also develop a class of entropy-based tests for serial independence. The latter are nuisance parameter free, and hence also qualify for dynamic misspecification analyses. We then investigate the finite-sample properties of our serial independence tests through Monte Carlo simulations. They perform quite well, entailing more power against some nonlinear AR alternatives than two popular nonparametric serial-independence tests. |
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Keywords: | Independence Misspecification testing Nonparametric theory Tsallis entropy |
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