The problem of detecting the presence of a signal that can lead to a disaster is studied. A decision-maker collects data sequentially over time. At some point in time, called the change point, the distribution of data changes. This change in distribution could be due to an event or a sudden arrival of an enemy object. If not detected quickly, this change has the potential to cause a major disaster. In space and military applications, the values of the measurements can stochastically grow with time as the enemy object moves closer to the target. A new class of stochastic processes, called exploding processes, is introduced to model stochastically growing data. An algorithm is proposed and shown to be asymptotically optimal as the mean time to a false alarm goes to infinity.
翻译:研究发现可能导致灾难的信号存在的问题。 决策者会按时间顺序收集数据。 在某个时间点, 称为变化点, 数据变化的分布。 这种分布的变化可能是由于一个事件或一个敌人物体突然抵达造成的。 如果不迅速发现, 这一变化有可能导致重大灾难。 在空间和军事应用方面, 测量的值会随着敌人物体接近目标的时间而迅速增长。 一种新型的随机过程, 叫做爆炸过程, 被引入模拟蒸蒸蒸汽式增长的数据中。 一种算法被提出来, 并被显示为与错误警报的平均时间一样最优化。</s>