D-Guaranteed Discrimination of Statistical Hypotheses: a Review of Results and Unsolved Problems


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Аннотация

We compare two sequential d-guaranteed tests and an optimal d-guaranteed test based on a fixed number of observations with respect to the average number of observations within the most accepted practical applications of Bayesian probabilistic models. We consider the sequential “first skipping” test, the sequential locally efficient test based on the score statistic, and the test based on a fixed number of observations that minimizes the necessary sample size. We study various characteristics of these tests connected with the number of observations within three probabilistic models, namely, the normal (ϑ, σ2) distribution of the observed random variable and the normal a priori distribution of ϑ with fixed σ2; the exponential distribution with the intensity parameter ϑ and the a priori gamma distribution of ϑ; and the Bernoulli sampling with the success probability ϑ and the a priori beta distribution of ϑ. We discuss the connection of the d-posterior approach with the compound decision problem as applied to the analysis of data provided by microchips (when the false discovery rate, or FDR, for short, is treated as the d-risk of the first kind). We present the vast data on characteristics of the mentioned tests obtained by the method of mathematical modeling in several tables. We discuss unsolved problems of the d-guaranteed discrimination of hypotheses with the minimal number of observations and approaches to their solution.

Об авторах

D. Simushkin

Kazan State University

Email: smshkn@gmail.com
Россия, Kazan

S. Simushkin

Kazan State University

Автор, ответственный за переписку.
Email: smshkn@gmail.com
Россия, Kazan

I. Volodin

Kazan State University

Email: smshkn@gmail.com
Россия, Kazan

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