Many modern applications require detecting change points in complex sequential data. Most existing methods for change point detection are unsupervised and, as a consequence, lack any information regarding what kind of changes we want to detect or if some kinds of changes are safe to ignore. This often results in poor change detection performance. We present a novel change point detection framework that uses true change point instances as supervision for learning a ground metric such that Sinkhorn divergences can be then used in two-sample tests on sliding windows to detect change points in an online manner. Our method can be used to learn a sparse metric which can be useful for both feature selection and interpretation in high-dimensional change point detection settings. Experiments on simulated as well as real world sequences show that our proposed method can substantially improve change point detection performance over existing unsupervised change point detection methods using only few labeled change point instances.
翻译:许多现代应用都需要在复杂的相继数据中探测变化点。 大多数现有的变化点探测方法都不受监督,因此缺乏关于我们希望检测到的哪些变化的信息,或者某些变化是否安全可以忽略的信息。这往往导致变化检测性能不佳。我们提出了一个新的变化点检测框架,它使用真实变化点实例作为监督,以了解一个地面测量标准,这样,在滑动窗口的双模样测试中就可以使用辛克霍恩差异,以在线方式检测变化点。我们的方法可以用来学习一种稀疏的测量标准,在高维度变化点检测设置中,这种测量对于地物的选择和解释都是有用的。模拟和真实世界序列的实验表明,我们提出的方法可以大大改进现有非监督变化点检测方法的运行性,而使用很少的标签变更点检测方法。