Optimal testing in a class of nonregular models

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Date

25 mars 2024

Type de document
Périmètre
Identifiant
  • 2403.16413
Collection

arXiv

Organisation

Cornell University




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Yuya Shimizu et al., « Optimal testing in a class of nonregular models », arXiv - économie


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This paper studies optimal hypothesis testing for nonregular statistical models with parameter-dependent support. We consider both one-sided and two-sided hypothesis testing and develop asymptotically uniformly most powerful tests based on the likelihood ratio process. The proposed one-sided test involves randomization to achieve asymptotic size control, some tuning constant to avoid discontinuities in the limiting likelihood ratio process, and a user-specified alternative hypothetical value to achieve the asymptotic optimality. Our two-sided test becomes asymptotically uniformly most powerful without imposing further restrictions such as unbiasedness. Simulation results illustrate desirable power properties of the proposed tests.

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