二次损失函数下贝叶斯多重检验的更好界

Jian Zhang, L. Fillatre, I. Nikiforov
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引用次数: 0

摘要

对于给定0-1损失函数的多假设检验问题,先前已经提出了贝叶斯检验。然而,该函数并不适用于许多应用,如入侵检测、异常检测等,在这些应用中,二次损失函数可以更合适地区分并发假设。虽然对于这个问题已经构造了一个二次损失函数的贝叶斯检验,但由于其界差,其渐近性能尚未得到很好的研究。本文的主要贡献是为这个贝叶斯检验和与0-1损失函数相关的贝叶斯检验构造了更好的界。利用这些新的界,从理论上证明了这两个检验之间的渐近等价取决于与假设相关的参数空间的几何形状。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Better Bounds for Bayesian Multiple Test with Quadratic Loss Function
A Bayesian test has been previously proposed for a multiple hypothesis testing problem given the 0-1 loss function. However, this function is not suitable for many applications such as intrusion detection, anomaly detection where a quadratic loss function can be more appropriate to distinguish the concurrent hypotheses. Although a Bayesian test with the quadratic loss function has been constructed for this problem, its asymptotic performance has not yet been well studied due to its poor bounds. The main contribution of this paper is the construction of better bounds for this Bayesian test and the one associated with the 0-1 loss function. With these new bounds, it is theoretically established that the asymptotic equivalence between these two tests depends on the geometry of the parameter space associated with the hypotheses.
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