高维分类数据异常点检测的选择值耦合学习

Guansong Pang, Hongzuo Xu, Longbing Cao, Wentao Zhao
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引用次数: 24

摘要

本文引入了一个新的框架,即SelectVC及其实例POP,用于学习选择值耦合(即完整值集与一组离群值之间的相互作用)以识别高维分类数据中的离群值。现有的离群点检测方法适用于完整的数据空间或特征子空间,这些子空间独立于随后的离群点评分进行识别。因此,由于不相关特征带来的噪声和巨大的搜索空间,高维数据中压倒性的不相关特征对它们构成了极大的挑战。相比之下,SelectVC通过联合优化离群值选择和值离群值评分,在由选择性值耦合跨越的干净和压缩的数据空间上工作。它的实例POP通过对部分离群值传播过程建模来定义一个值离群值评分函数,以捕获选择性值耦合。POP进一步定义了top-k离群值选择方法,以确保其对巨大搜索空间的可扩展性。我们表明,POP (i)在12个具有不同程度不相关特征的真实世界高维数据集上,显著优于五种最先进的基于全空间或子空间的离群值检测器及其与三种特征选择方法的组合;(ii)可扩展性好,性能w.r.t.k稳定,收敛速度快。
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Selective Value Coupling Learning for Detecting Outliers in High-Dimensional Categorical Data
This paper introduces a novel framework, namely SelectVC and its instance POP, for learning selective value couplings (i.e., interactions between the full value set and a set of outlying values) to identify outliers in high-dimensional categorical data. Existing outlier detection methods work on a full data space or feature subspaces that are identified independently from subsequent outlier scoring. As a result, they are significantly challenged by overwhelming irrelevant features in high-dimensional data due to the noise brought by the irrelevant features and its huge search space. In contrast, SelectVC works on a clean and condensed data space spanned by selective value couplings by jointly optimizing outlying value selection and value outlierness scoring. Its instance POP defines a value outlierness scoring function by modeling a partial outlierness propagation process to capture the selective value couplings. POP further defines a top-k outlying value selection method to ensure its scalability to the huge search space. We show that POP (i) significantly outperforms five state-of-the-art full space- or subspace-based outlier detectors and their combinations with three feature selection methods on 12 real-world high-dimensional data sets with different levels of irrelevant features; and (ii) obtains good scalability, stable performance w.r.t. k, and fast convergence rate.
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