“…Real-world applications like cloud computing, micro-service systems, etc., generate large amount and high dimensional time series data and they needed to be processed by fast and accurate MTS anomaly detection methods. Although many machine learning algorithms were proposed to detect anomalies in MTS [4,12,17,23,29,37,42], how to achieve a fast training speed while retaining fairly high detection accuracy is underexplored. Classical methods like [6,14,20,29,39,41] have a fast training speed, but their detection accuracy is not high, due to low expressiveness capability of their model.…”