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JOURNALS // Teoriya Veroyatnostei i ee Primeneniya // Archive

Teor. Veroyatnost. i Primenen., 1982 Volume 27, Issue 3, Pages 587–592 (Mi tvp2394)

This article is cited in 1 paper

Short Communications

On the asymptotical effectiveness of testing a simple hypothesis against a composite alternative

Yu. I. Ingster

Leningrad

Abstract: Let $X_\varepsilon$ be an observations with a distribution $P_\theta^\varepsilon$, $\theta\in\Theta$, where the parametric space $\Theta$ is an open subset if the real line, $\varepsilon$ is a real parameter, $\varepsilon\to\varepsilon_0$ (for example, $\varepsilon$ is the number of discrete observations in the sample $X_\varepsilon$ or the length of a continuous process realisation $X_\varepsilon$: $\varepsilon_0=\infty$). On the basis of Âayes' approach we consider the problem of testing the hypothesis $H_0$: $\theta=\xi$ against the hypothesis $H_1$: $\theta$ is a random variable having a priori distribution with the density $\pi(\theta)$. If the probability of the error of the second kind is fixed, then the optimal test (which minimizes the probability of an error of the first kind) is based on the likelihood ratio
$$ \frac{dP_{H_1}^\varepsilon}{dP_{H_0}^\varepsilon}= \int_\Theta\frac{dP_\theta^\varepsilon}{dP_\xi^\varepsilon}\pi(\theta)\,d\theta $$
It is shown that the methods elaborated in [1]–[3] enable us to prove the asymptotic optimality of likelihood ratio test and to receive the asymptotically exact estimates for the probability of error of the first kind for the optimal test. We extend also some results of [5] on a class of models considered in [1]–[4].

Received: 05.12.1978


 English version:
Theory of Probability and its Applications, 1983, 27:3, 628–633

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