Error Exponents In Distributed Hypothesis Testing Of Correlations

2019 IEEE INTERNATIONAL SYMPOSIUM ON INFORMATION THEORY (ISIT)(2019)

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摘要
We study a distributed hypothesis testing problem where two parties observe i.i.d. samples from two rho-correlated standard normal random variables X and Y. The party that observes the X-samples can communicate R bits per sample to the second party, that observes the Y-samples, in order to test between two correlation values. We investigate the best possible type-II error subject to a fixed type-I error, and derive an upper (impossibility) bound on the associated type-II error exponent. Our techniques include representing the conditional Y-samples as a trajectory of the Ornstein-Uhlenbeck process, and bounding the associated KL divergence using the subadditivity of the Wasserstein distance and the Gaussian Talagrand inequality.
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关键词
Y-samples,correlation values,possible type-II error subject,fixed type-I error,associated type-II error exponent,associated KL divergence,error exponents,distributed hypothesis testing problem,X-samples,Ornstein-Uhlenbeck process,Gaussian Talagrand inequality,Wasserstein distance
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