Changepoints are abrupt variations in the underlying distribution of data. Detecting changes in a data stream is an important problem with many applications. In this paper, we are interested in changepoint detection algorithms which operate in an online setting in the sense that both its storage requirements and worst-case computational complexity per observation are independent of the number of previous observations. We propose an online changepoint detection algorithm for both univariate and multivariate data which compares favorably with offline changepoint detection algorithms while also operating in a strictly more constrained computational model. In addition, we present a simple online hyperparameter auto tuning technique for these algorithms.
翻译:更改点是数据基本分布的突变。 检测数据流的变化是许多应用中的一个重要问题。 在本文中, 我们感兴趣的是变化点检测算法, 它在网络环境中运行, 其存储要求和每观察最坏的计算复杂性都与先前的观测数量无关。 我们建议对单向和多变量数据采用在线变化点检测算法, 与离线变化点检测算法相比, 并且运行一个严格受限的计算模型。 此外, 我们为这些算法提出了一个简单的在线超参数自动调技术 。