集体异常检测的多任务多模态模型

T. Idé, D. Phan, J. Kalagnanam
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引用次数: 24

摘要

本文提出了一种新的异常检测框架,用于对多个复杂系统进行综合监测。工业应用中基于状态的监控的先决条件是具备以下能力:(1)捕获多个操作状态,(2)管理许多相似但不同的资产,以及(3)提供对变量内部关系的洞察。为了满足这些标准,我们提出了一种基于稀疏高斯图形模型(GGMs)的稀疏混合的多任务学习方法。与现有的基于融合和组套的方法不同,每个任务由稀疏ggm的稀疏混合表示,并且可以处理多模态。本文提出了一种结合稀疏混合权值选择算法的变分推理算法。为了解决传统的自动关联确定(ARD)方法中的问题,我们提出了一个新的保证混合权重稀疏性的正则化公式。我们表明,我们的框架消除了混合模型学习迭代过程中众所周知的数值不稳定性问题。我们还在真实数据集的异常检测任务中显示出更好的性能。据我们所知,这是允许多模态分布的多任务GGM学习的第一个建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-task Multi-modal Models for Collective Anomaly Detection
This paper proposes a new framework for anomaly detection when collectively monitoring many complex systems. The prerequisite for condition-based monitoring in industrial applications is the capability of (1) capturing multiple operational states, (2) managing many similar but different assets, and (3) providing insights into the internal relationship of the variables. To meet these criteria, we propose a multi-task learning approach based on a sparse mixture of sparse Gaussian graphical models (GGMs). Unlike existing fused- and group-lasso-based approaches, each task is represented by a sparse mixture of sparse GGMs, and can handle multi-modalities. We develop a variational inference algorithm combined with a novel sparse mixture weight selection algorithm. To handle issues in the conventional automatic relevance determination (ARD) approach, we propose a new ℓ0-regularized formulation that has guaranteed sparsity in mixture weights. We show that our framework eliminates well-known issues of numerical instability in the iterative procedure of mixture model learning. We also show better performance in anomaly detection tasks on real-world data sets. To the best of our knowledge, this is the first proposal of multi-task GGM learning allowing multi-modal distributions.
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