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JOURNALS // Teoriya Veroyatnostei i ee Primeneniya // Archive

Teor. Veroyatnost. i Primenen., 1981 Volume 26, Issue 2, Pages 246–265 (Mi tvp2509)

This article is cited in 147 papers

Martingale approach in the theory of goodness-of-fit tests

E. V. Hmaladze

Moscow

Abstract: Let us consider the parametric hypothesis that the distribution function $F$ of i. i. d. random variables belongs to the given parametric family of distribution functions $\mathbf F=\{F(x,\theta),\,\theta\in\Theta\}$. It is well-known that the limiting distribution of the parametric empirical process $\sqrt n[F_n(x)-F(x,\widehat\theta)]$ depends on $F$, and therefore the «usual» testing procedures become inconvenient.
In the paper we consider the parametric empirical process as a semimartingale. By means of its Doob–Meyer decomposition we construct some martingale and show that this martingale converges weakly to the Wiener process. This fact enables us to use the distribution-free asymptotic theory of testing parametric hypotheses.

UDC: 519.2

Received: 11.11.1980


 English version:
Theory of Probability and its Applications, 1982, 26:2, 240–257

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