We study the adversarial binary hypothesis testing problem in the sequential setting. Associated with each hypothesis is a closed, convex set of distributions. Given the hypothesis, each observation is generated according to a distribution chosen (from the set associated with the hypothesis) by an adversary who has access to past observations. In the sequential setting, the number of observations the detector uses to arrive at a decision is variable; this extra freedom improves the asymptotic performance of the test. We characterize the closure of the set of achievable pairs of error exponents. We also study the problem under constraints on the number of observations used and the probability of error incurred.
翻译:本文研究序贯设置下的对抗性二元假设检验问题。每个假设对应一个闭凸分布集合。给定假设后,每个观测值由能够访问历史观测数据的对抗者从该假设对应的集合中选择一个分布生成。在序贯设置中,检测器用于做出决策的观测数量是可变的;这种额外的自由度提升了检验的渐近性能。我们刻画了可实现的误差指数对集合的闭包。同时,我们还研究了在观测数量使用和误差概率约束下的该问题。