数据挖掘中的异常检测。过滤和细化与DBSCAN的混合方法

Stefan-Iulian Handra, H. Ciocarlie
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引用次数: 9

摘要

异常检测是未来数据挖掘的关键领域。我们将尝试提出一些适用于数据挖掘过程的关键异常检测方法。有些方法是现有的技术,如DBSCAN算法,有些方法是最近才向公众提出的,可能是未来异常检测发展的答案。一个例子是过滤和细化方法,这是一种新的通用两阶段技术,用于更高效和有效的异常检测。本文将试图说明所提出的经典技术的优点和缺点,但正如我们将看到的,结果完全依赖于所分析的数据集。我们将强调效率、稳健性和准确性。我们还将尝试演示通过将过滤和细化方法与DBSCAN算法相结合获得的混合方法。在我们的实验中,我们试图比较普通DBSCAN算法与混合DBSCAN算法的性能。我们的研究结果表明,混合方法在检测异常方面更加准确,并且在速度方面远远优于普通的DBSCAN算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Anomaly detection in data mining. Hybrid approach between filtering-and-refinement and DBSCAN
Anomaly detection is a domain that represents the key for the future of data mining. We will try to present some key anomaly detection methods applicable in the data mining process. Some methods are existing techniques as the DBSCAN algorithm and some have just been presented to the public recently and could be the answer to future anomaly detection development. One example is the filtering-and-refinement approach, a new general two stage technique for more efficient and effective anomaly detection. This paper will try to illustrate the strengths and weaknesses of the classical techniques presented but as we will see the results are completely dependent on the data sets that are analyzed. We will emphasize on efficiency, robustness and accuracy. We will also try to demonstrate a hybrid approach obtained by combining the filtering-and-refinement method with the DBSCAN algorithm. In our experiments we pursued to compare the performance of the normal DBSCAN algorithm with the performance of the hybrid one. Our results indicate that the hybrid method is more accurate in terms of detecting anomalies and far superior in terms of speed than the normal DBSCAN algorithm.
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