Multivariate time series can often have a large number of dimensions, whether it is due to the vast amount of collected features or due to how the data sources are processed. Frequently, the main structure of the high-dimensional time series can be well represented by a lower dimensional subspace. As vast quantities of data are being collected over long periods of time, it is reasonable to assume that the underlying subspace structure would change over time. In this work, we propose a change-point detection method based on low-rank matrix factorisation that can detect multiple changes in the underlying subspace of a multivariate time series. Experimental results on both synthetic and real data sets demonstrate the effectiveness of our approach and its advantages against various state-of-the-art methods.
翻译:多变量时间序列往往具有许多维度,无论是由于收集的特征数量巨大,还是由于数据源的处理方式。通常,高维时间序列的主要结构可以用一个低维子空间来很好地代表。由于大量数据是长期收集的,因此可以合理地假定基础子空间结构将随时间而变化。在这项工作中,我们建议采用基于低级矩阵因子化的改变点探测方法,该方法可以探测多变量时间序列下基空间的多重变化。合成数据组和实际数据组的实验结果显示了我们的方法的有效性及其相对于各种最新方法的优势。