点式的
成对比较
异常检测
系列(地层学)
计算机科学
变压器
联想(心理学)
异常(物理)
数学
算法
人工智能
物理
数学分析
哲学
认识论
生物
古生物学
电压
量子力学
凝聚态物理
作者
Jiehui Xu,Haixu Wu,Jianmin Wang,Mingsheng Long
出处
期刊:Schloss Dagstuhl - Leibniz-Zentrum für Informatik - Dagstuhl Research Online Publication Server (DROPS)
日期:2021-10-06
被引量:235
标识
DOI:10.48550/arxiv.2110.02642
摘要
Unsupervised detection of anomaly points in time series is a challenging problem, which requires the model to derive a distinguishable criterion. Previous methods tackle the problem mainly through learning pointwise representation or pairwise association, however, neither is sufficient to reason about the intricate dynamics. Recently, Transformers have shown great power in unified modeling of pointwise representation and pairwise association, and we find that the self-attention weight distribution of each time point can embody rich association with the whole series. Our key observation is that due to the rarity of anomalies, it is extremely difficult to build nontrivial associations from abnormal points to the whole series, thereby, the anomalies' associations shall mainly concentrate on their adjacent time points. This adjacent-concentration bias implies an association-based criterion inherently distinguishable between normal and abnormal points, which we highlight through the \emph{Association Discrepancy}. Technically, we propose the \emph{Anomaly Transformer} with a new \emph{Anomaly-Attention} mechanism to compute the association discrepancy. A minimax strategy is devised to amplify the normal-abnormal distinguishability of the association discrepancy. The Anomaly Transformer achieves state-of-the-art results on six unsupervised time series anomaly detection benchmarks of three applications: service monitoring, space & earth exploration, and water treatment.
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