最优检验误差概率的渐近性

Q4 Mathematics
V. Kanišauskas, K. Kanišauskienė
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引用次数: 0

摘要

我们考虑在任意性质的观测值Xt下,当参数化为时间t≥0的两个简单假设H1t和H2t被检验时,渐近最优检验(Neyman-Pearson, minimax, Bayesian)的第一次和第二次误差概率。给出了由测度P1t和测度P2t之间的α型Hellinger积分决定的最优判据误差概率渐近减小的条件,证明了在极大极小和贝叶斯判据的情况下,当α∈(0,1)时,研究Hellinger积分是充分的,而在Neyman-Pearson判据的情况下,只在点α=1的环境下观察到。而Kullback-Leibler信息距离总是大于Chernoff距离;我们发现,在Neyman-Pearson准则的情况下,II型错误的概率比极大极小准则或贝叶斯准则的情况下下降得更快。本文最后给出了i.i.d情况下的标记点过程、非齐次泊松过程和几何更新过程的例子,证明了这一点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Asymptotics of error probabilities of optimal tests
We consider first and second error probabilities of asymptotically optimal tests (Neyman-Pearson, minimax, Bayesian) when two simple hypotheses H1t and H2t parametrized by time t ≥ 0 are tested under the observation Xt of arbitrary nature. The paper provides details on the conditions of asymptotic decrease of probabilities of optimal criteria errors determined by α type Hellinger integral between measures P1t and P2t, demonstrating that in the case of minimax and Bayesian criteria it is sufficient to investigate Hellinger integral, when α ∈ (0,1), and in the case of Neyman-Pearson criterion it is observed only in the environment of point α=1. Whereas Kullback-Leibler information distance is always larger than Chernoff distance; we discover that, in the case of Neyman-Pearson criterion, the probability of type II error decreases faster than in the cases of minimax or Bayesian criteria. This is proven by the examples of marked point processes of the i.i.d. case, non-homogeneous Poisson process and the geometric renewal process presented at the end of the paper.
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来源期刊
Theory of Stochastic Processes
Theory of Stochastic Processes Mathematics-Applied Mathematics
CiteScore
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