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Multinomial goodness-of-fit based on U-statistics: High-dimensional asymptotic and minimax optimality

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Abstract We consider multinomial goodness-of-fit tests in the high-dimensional regime where the number of bins increases with the sample size. In this regime, Pearson’s chi-squared test can suffer from low… Click to show full abstract

Abstract We consider multinomial goodness-of-fit tests in the high-dimensional regime where the number of bins increases with the sample size. In this regime, Pearson’s chi-squared test can suffer from low power due to the substantial bias as well as high variance of its statistic. To resolve these issues, we introduce a family of U -statistics for multinomial goodness-of-fit and study their asymptotic behaviors in high-dimensions. Specifically, we establish conditions under which the considered U -statistic is asymptotically Poisson or Gaussian, and investigate its power function under each asymptotic regime. Furthermore, we introduce a class of weights for the U -statistic that results in minimax rate optimal tests.

Keywords: high dimensional; multinomial goodness; fit based; goodness fit

Journal Title: Journal of Statistical Planning and Inference
Year Published: 2018

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