CTF: Anomaly Detection in High-Dimensional Time Series with Coarse-to-Fine Model Transfer

Ming Sun, Ya Su, Shenglin Zhang, Yuanpu Cao, Yuqing Liu, Dan Pei, Wenfei Wu, Yongsu Zhang, Xiaozhou Liu, Junliang Tang
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引用次数: 21

Abstract

Anomaly detection is indispensable in modern IT infrastructure management. However, the dimension explosion problem of the monitoring data (large-scale machines, many key performance indicators, and frequent monitoring queries) causes a scalability issue to the existing algorithms. We propose a coarse-to-fine model transfer based framework CTF to achieve a scalable and accurate data-center-scale anomaly detection. CTF pre-trains a coarse-grained model, uses the model to extract and compress per-machine features to a distribution, clusters machines according to the distribution, and conducts model transfer to fine-tune per-cluster models for high accuracy. The framework takes advantage of clustering on the per-machine latent representation distribution, reusing the pre-trained model, and partial-layer model fine-tuning to boost the whole training efficiency. We also justify design choices such as the clustering algorithm and distance algorithm to achieve the best accuracy. We prototype CTF and experiment on production data to show its scalability and accuracy. We also release a labeling tool for multivariate time series and a labeled dataset to the research community.
CTF:基于粗-细模型转换的高维时间序列异常检测
异常检测在现代IT基础设施管理中不可或缺。然而,监控数据的维度爆炸问题(大型机器、许多关键性能指标和频繁的监控查询)给现有算法带来了可伸缩性问题。我们提出了一种基于粗到精模型转换的框架CTF,以实现可扩展和精确的数据中心尺度异常检测。CTF对粗粒度模型进行预训练,利用该模型提取每台机器的特征并压缩到一个分布,根据分布对机器进行聚类,并进行模型转移对每台机器进行微调,以获得更高的精度。该框架利用对每台机器潜在表示分布的聚类、预训练模型的重用和部分层模型的微调来提高整体训练效率。我们还证明了设计选择,如聚类算法和距离算法,以达到最佳的精度。我们对CTF进行了原型设计,并在生产数据上进行了实验,以证明其可扩展性和准确性。我们还向研究界发布了一个多变量时间序列标记工具和一个标记数据集。
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