The problem of quickest detection of a change in the distribution of a sequence of independent observations is considered. The pre-change observations are assumed to be stationary with a known distribution, while the post-change observations are allowed to be non-stationary with some possible parametric uncertainty in their distribution. In particular, it is assumed that the cumulative Kullback-Leibler divergence between the post-change and the pre-change distributions grows in a certain manner with time after the change-point. For the case where the post-change distributions are known, a universal asymptotic lower bound on the delay is derived, as the false alarm rate goes to zero. Furthermore, a window-limited Cumulative Sum (CuSum) procedure is developed, and shown to achieve the lower bound asymptotically. For the case where the post-change distributions have parametric uncertainty, a window-limited (WL) generalized likelihood-ratio (GLR) CuSum procedure is developed and is shown to achieve the universal lower bound asymptotically. Extensions to the case with dependent observations are discussed. The analysis is validated through numerical results on synthetic data. The use of the WL-GLR-CuSum procedure in monitoring pandemics is also demonstrated.
翻译:考虑了对独立观测分布顺序变化进行最快速检测的问题; 假设变化前观测是固定的,其分布为已知的分布,而允许变化后观测为不固定的,其分布中可能存在某些参数不确定性; 特别是,假设变化后分布和变化前分布之间的累积 Kullback-Leber差异随着变化点之后的时间而以某种方式增加; 对于已知变化后分布的情况,随着错误的警报率降至零而得出对延迟的普遍零反应下限; 此外,还开发了一个受窗口限制的累积总和(Cusum)程序,显示该程序达到了较低的约束范围; 对于变化后分布具有参数不确定性的情况,则会发展一种受窗口限制(WL)的通用概率拉特(GLR)程序; 对于已知变化后分布的情况,将形成普遍低约束的库苏姆程序; 以依赖性观测的速度扩大案件的范围。 此外,还开发了一个受窗口限制的累积总累积总(C)程序,通过对合成数据的监测结果加以验证。