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Anomaly Detection Algorithm Based on Subspace Local Density Estimation

机译:基于子空间局部密度估计的异常检测算法

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摘要

In this article, the authors propose a novel anomaly detection algorithm based on subspace local density estimation. The key insight of the proposed algorithm is to build multiple trident trees, which can implement the process of building subspace and local density estimation. Each trident tree (T-tree) is constructed recursively by splitting the data outside of 3 sigma into the left or right subtree and splitting the remaining data into the middle subtree. Each node in trident tree records the number of instances that falls on this node, so each trident tree can be used as a local density estimator. The density of each instance is the average of all trident tree evaluation instance densities, and it can be used as the anomaly score of instances. Since each trident tree is constructed according to 3 sigma principle, it can obtain good anomaly detection results without a large tree height. Theoretical analysis and experimental results show that the proposed algorithm is effective and efficient.
机译:在本文中,作者提出了一种基于子空间局部密度估计的新颖异常检测算法。该算法的关键思想是构建多个三叉戟树,可以实现构建子空间和局部密度估计的过程。通过将3 sigma之外的数据拆分为左侧或右侧子树,并将其余数据拆分为中间子树,来递归构造每个三叉戟树(T树)。三叉戟树中的每个节点记录了落在该节点上的实例数,因此每个三叉戟树都可以用作局部密度估计器。每个实例的密度是所有三叉戟树评估实例密度的平均值,可以用作实例的异常分数。由于每棵三叉戟树都是按照3 sigma原理构造的,因此无需大树高就能获得良好的异常检测结果。理论分析和实验结果表明,该算法是有效的。

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