Continuous-time event sequences represent discrete events occurring in continuous time. Such sequences arise frequently in real-life. Usually we expect the sequences to follow some regular pattern over time. However, sometimes these patterns may be interrupted by unexpected absence or occurrences of events. Identification of these unexpected cases can be very important as they may point to abnormal situations that need human attention. In this work, we study and develop methods for detecting outliers in continuous-time event sequences, including unexpected absence and unexpected occurrences of events. Since the patterns that event sequences tend to follow may change in different contexts, we develop outlier detection methods based on point processes that can take context information into account. Our methods are based on Bayesian decision theory and hypothesis testing with theoretical guarantees. To test the performance of the methods, we conduct experiments on both synthetic data and real-world clinical data and show the effectiveness of the proposed methods.
翻译:连续时间事件序列代表连续时间发生的不连续事件。这种序列经常发生于现实生活中。我们通常期望这些序列会随着时间的流逝而变化。但是,有时这些模式会因意外的缺席或事件发生而中断。查明这些意外事件可能非常重要,因为它们可能指向需要人类注意的不正常情况。在这项工作中,我们研究和制定在连续时间事件序列中探测外部结果的方法,包括意外的缺席和意外的事件发生。由于事件序列所遵循的模式在不同情况下可能发生变化,我们根据能够考虑到背景信息的点点程序制定外部检测方法。我们的方法基于贝叶斯人的决定理论和假设测试,并有理论保证。为了检验方法的性能,我们进行合成数据和现实世界临床数据的实验,并显示拟议方法的有效性。