基于surprisar的分类数据异常检测算法

Ossama Cherkaoui, Houda Anoun, Abderrahim Maizate
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引用次数: 0

摘要

异常检测是一个重要的研究领域,具有广泛的实际应用。尽管已经提出了许多算法来解决数值数据集的异常检测问题,但分类和混合数据集仍然是一个重大挑战,主要是因为缺乏自然距离度量。因此,在文献中提出的方法实现完全不同的假设关于分类异常的定义。本文提出了一种新的分类异常检测方法,对现有方法做出了两个关键贡献。首先,引入了一种新的基于surprisel的异常评分,该评分通过考虑分类值的完整分布,提供了更准确的异常评估。其次,该方法考虑了特征的两两相互作用之外的数据中的复杂相关性。本文提出了一种新的分类异常检测算法(CSAD),并对其进行了比较和评价。实验结果表明,CSAD综合性能最好,平均ROC-AUC和PR-AUC值最高,分别为0.8和0.443。此外,即使在处理大型高维数据集时,CSAD的执行时间也令人满意。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Surprisal-based algorithm for detecting anomalies in categorical data
Anomaly detection is an important research area in a diverse range of real-world applications. Although many algorithms have been proposed to address anomaly detection for numerical datasets, categorical and mixed datasets remain a significant challenge, primarily because a natural distance metric is lacking. Consequently, the methods proposed in the literature implement entirely different assumptions regarding the definition of categorical anomalies. This paper presents a novel categorical anomaly detection approach, offering two key contributions to existing methods. First, a novel surprisal-based anomaly score is introduced, which provides a more accurate assessment of anomalies by considering the full distribution of categorical values. Second, the proposed method considers complex correlations in the data beyond the pairwise interactions of features. This study proposed and tested the novel categorical surprisal anomaly detection algorithm (CSAD) by comparing and evaluating it against six competitors. The experimental results indicate that CSAD produced the best overall performance, achieving the highest average ROC-AUC and PR-AUC values of 0.8 and 0.443, respectively. Furthermore, CSAD's execution time is satisfactory even when processing large, high-dimensional datasets.
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CiteScore
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