初始化
异常检测
计算机科学
一般化
人工智能
多元统计
聚类分析
变压器
机器学习
系列(地层学)
异常(物理)
时间序列
数据挖掘
模式识别(心理学)
数学
工程类
数学分析
古生物学
物理
凝聚态物理
电压
生物
程序设计语言
电气工程
作者
Junho Song,Keonwoo Kim,Jeonglyul Oh,Sungzoon Cho
出处
期刊:Cornell University - arXiv
日期:2023-01-01
被引量:20
标识
DOI:10.48550/arxiv.2312.02530
摘要
Detecting anomalies in real-world multivariate time series data is challenging due to complex temporal dependencies and inter-variable correlations. Recently, reconstruction-based deep models have been widely used to solve the problem. However, these methods still suffer from an over-generalization issue and fail to deliver consistently high performance. To address this issue, we propose the MEMTO, a memory-guided Transformer using a reconstruction-based approach. It is designed to incorporate a novel memory module that can learn the degree to which each memory item should be updated in response to the input data. To stabilize the training procedure, we use a two-phase training paradigm which involves using K-means clustering for initializing memory items. Additionally, we introduce a bi-dimensional deviation-based detection criterion that calculates anomaly scores considering both input space and latent space. We evaluate our proposed method on five real-world datasets from diverse domains, and it achieves an average anomaly detection F1-score of 95.74%, significantly outperforming the previous state-of-the-art methods. We also conduct extensive experiments to empirically validate the effectiveness of our proposed model's key components.
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