Correlation-Aware Change-Point Detection via Graph Neural Networks
James "Jim" Melenkevitz PhD
Quantitative Analysis, Data Science, Finance, Advanced Mathematical Methods, Specialized Computations, Software Development, Professor
by Ruohong Zhang, Yu Hao, Donghan Yu, Wei-Cheng Chang, Guokun Lai and Yiming Yang
https://arxiv.org/pdf/2004.11934.pdf
Abstract: Change-point detection (CPD) aims to detect abrupt changes over time series data. Intuitively, effective CPD over multivariate time series should require explicit modeling of the dependencies across input variables. However, existing CPD methods either ignore the dependency structures entirely or rely on the (unrealistic) assumption that the correlation structures are static over time. In this paper, we propose a Correlation-aware Dynamics Model for CPD, which explicitly models the correlation structure and dynamics of variables by incorporating graph neural networks into an encoder-decoder framework. Extensive experiments on synthetic and real-world datasets demonstrate the advantageous performance of the proposed model on CPD tasks over strong baselines,as well as its ability to classify the change-points as correlation changes or independent changes [1].