计算机科学
异常检测
动态时间归整
稳健性(进化)
时间序列
推论
人工智能
系列(地层学)
数据挖掘
模式识别(心理学)
机器学习
生物化学
生物
基因
古生物学
化学
作者
Shenghua Liu,Bin Zhou,Quan Ding,Bryan Hooi,Zhengbo Zhang,Huawei Shen,Xueqi Cheng
标识
DOI:10.1109/tkde.2021.3140058
摘要
Time series data naturally exist in many domains including medical data analysis, infrastructure sensor monitoring, and motion tracking. However, a very small portion of anomalous time series can be observed, comparing to the whole data. Most existing approaches are based on the supervised classification model requiring representative labels for anomaly class(es), which is challenging in real-world problems. So can we learn how to detect anomalous time ticks in an effective yet efficient way, given mostly normal time series data? Therefore, we propose an unsupervised reconstruction model named BeatGAN which learns to detect anomalies based on normal data, or data which majority of samples are normal. BeatGAN provides a framework to adversarially learn to reconstruct, which can cooperate with both 1-d CNN and RNN. Rarely observed anomalies can result in larger reconstruction errors, which are then detected based on extreme value theory. Moreover, data augmentation with dynamic time warping regularizes reconstruction and provides robustness. In the experiments, effectiveness and sensitivity are studied in both synthetic data and various real-world time series. BeatGAN achieves better accuracy and fast inference.
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