机器学习用于文本异常检测:系统综述

Karima Boutalbi, Faiza Loukil, H. Verjus, David Telisson, Kave Salamatian
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引用次数: 0

摘要

异常检测是各个领域的共同任务,近年来引起了大量的研究工作。现有的评论主要集中在结构化数据,如数字或分类数据。一些研究对异构数据或特定领域的异常检测进行了综述。然而,对非结构化文本数据的异常检测研究较少。在这项工作中,我们的目标是文本异常检测。因此,我们在文中提出了异常检测解决方案的系统综述。为此,我们从异常检测类型、特征提取方法和机器学习方法等方面分析了调查中包含的论文。我们还介绍了一种从数字图书馆中收集论文的网络抓取方法,并提出了一种自动分类选定论文的聚类方法。最后,我们将提出的自动聚类方法与人工分类方法进行了比较,并展示了我们的贡献的兴趣。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning for Text Anomaly Detection: A Systematic Review
Anomaly detection is a common task in various domains, which has attracted significant research efforts in recent years. Existing reviews mainly focus on structured data, such as numerical or categorical data. Several studies treated review of anomaly detection in general on heterogeneous data or concerning a specific domain. However, anomaly detection on unstructured textual data is less treated. In this work, we target textual anomaly detection. Thus, we propose a systematic review of anomaly detection solutions in the text. To do so, we analyze the included papers in our survey in terms of anomaly detection types, feature extraction methods, and machine learning methods. We also introduce a web scrapping to collect papers from digital libraries and propose a clustering method to classify selected papers automatically. Finally, we compare the proposed automatic clustering approach with manual classification, and we show the interest of our contribution.
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