Anomaly detection and trend prediction are two fundamental tasks in automatic IT systems monitoring. In this paper, a joint model Anomaly Detector & Trend Predictor (ADTP) is proposed. In our design, the variational auto-encoder (VAE) and long short-term memory (LSTM) are joined together to address both anomaly detection and trend prediction. The prediction block (LSTM) takes clean input from the reconstructed time series by VAE, which makes it robust to the anomalies and noise. In the meantime, the LSTM block maintains the long-term sequential patterns, which are out of the sight of a VAE encoding window. This leads to the better performance of VAE in anomaly detection than it is trained alone. In the whole processing pipeline, the spectral residual analysis is integrated with VAE and LSTM to boost the performance of both. The superior performance on two tasks is confirmed with the experiments on two challenging evaluation benchmarks.
翻译:异常探测和趋势预测是自动信息技术系统监测的两项基本任务。本文提出了一个联合模型“异常探测器和趋势预测”(ADTP),在设计中,将变式自动编码器(VAE)和长期短期内存(LSTM)结合在一起,以解决异常探测和趋势预测问题。预测块(LSTM)从VAE重建的时间序列中提取干净的输入,使其对异常和噪音具有很强性能。与此同时,LSTM区块保持长期的连续模式,这是VAE编码窗口所看不到的。这导致VAE在异常探测方面比单人训练的更好表现。在整个处理管道中,光谱残余分析与VAE和LSTM相结合,以提高两者的性能。两项任务的优异性表现与两项具有挑战性的评价基准的实验得到证实。