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Semi-supervised anomaly detection algorithms: A comparative summary and future research directions

机译:半监督异常检测算法:比较摘要和未来的研究方向

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摘要

While anomaly detection is relatively well-studied, it remains a topic of ongoing interest and challenge, as our society becomes increasingly interconnected and digitalized. In this paper, we focus on existing anomaly detection approaches, by empirically studying the performance of 29 semi-supervised anomaly detection algorithms on 95 benchmark imbalanced databases from the KEEL repository. These include well-established and commonly used classifiers (e.g., One-Class Support Vector Machine (ocSVM) and Isolation Forest) and recent proposals (e.g., BRM and XGBOD). Findings from our in-depth empirical study show that BRM is a robust classifier, in terms of achieving better classification results than the other 28 state-of-the-art techniques on diverse anomaly detection problems. We also observe that OCKRA, Isolation Forest, and ocSVM achieve good performance overall AUC, but poor classification results on databases where the number of objects is equal or greater than 1,460, all features are nominal, or the imbalance ratio is equal or greater than 39.14. (c) 2021 Elsevier B.V. All rights reserved.
机译:虽然异常检测相对良好,但它仍然是持续兴趣和挑战的主题,因为我们的社会变得越来越互连和数字化。在本文中,我们专注于现有的异常检测方法,通过凭经验研究了来自龙骨存储库的95个基准的分析数据库的29个半监督异常检测算法的性能。这些包括完善和常用的分类器(例如,单级支持向量机(OCSVM)和隔离林)和最近的建议(例如,BRM和XGBod)。我们深入的实证研究结果表明,BRM是一种强大的分类器,就可以实现比其他28种最新技术在不同的异常检测问题上的最先进技术方面的稳健分类器。我们还观察到IOCHRA,隔离林和OCSVM实现了良好的性能,但对物体数量相等或大于1,460的数据库的分类结果差,所有特征是标称的,或者不平衡比率等于或大于39.14 。 (c)2021 elestvier b.v.保留所有权利。

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