Optimal Stein-type goodness-of-fit tests for count data

Publication date

2022-09-27



Abstract

Common count distributions, such as the Poisson (binomial) distribution for unbounded (bounded) counts considered here, can be characterized by appropriate Stein identities. These identities, in turn, might be utilized to define a corresponding goodness-of-fit (GoF) test, the test statistic of which involves the computation of weighted means for a user-selected weight function f. Here, the choice of f should be done with respect to the relevant alternative scenario, as it will have great impact on the GoF-test's performance. We derive the asymptotics of both the Poisson and binomial Stein-type GoF-statistic for general count distributions (we also briefly consider the negative-binomial case), such that the asymptotic power is easily computed for arbitrary alternatives. This allows for an efficient implementation of optimal Stein tests, that is, which are most powerful within a given class (Formula presented.) of weight functions. The performance and application of the optimal Stein-type GoF-tests is investigated by simulations and several medical data examples. © 2022 The Authors. Biometrical Journal published by Wiley-VCH GmbH.

Document Type

Article


Published version

Language

English

Pages

24 p.

Publisher

John Wiley and Sons Inc

Published in

Biometrical Journal

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CRM Articles [719]