Outlier Detection with Cluster Catch Digraphs

Rui Shi, Nedret Billor, Elvan Ceyhan
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Abstract

This paper introduces a novel family of outlier detection algorithms based on Cluster Catch Digraphs (CCDs), specifically tailored to address the challenges of high dimensionality and varying cluster shapes, which deteriorate the performance of most traditional outlier detection methods. We propose the Uniformity-Based CCD with Mutual Catch Graph (U-MCCD), the Uniformity- and Neighbor-Based CCD with Mutual Catch Graph (UN-MCCD), and their shape-adaptive variants (SU-MCCD and SUN-MCCD), which are designed to detect outliers in data sets with arbitrary cluster shapes and high dimensions. We present the advantages and shortcomings of these algorithms and provide the motivation or need to define each particular algorithm. Through comprehensive Monte Carlo simulations, we assess their performance and demonstrate the robustness and effectiveness of our algorithms across various settings and contamination levels. We also illustrate the use of our algorithms on various real-life data sets. The U-MCCD algorithm efficiently identifies outliers while maintaining high true negative rates, and the SU-MCCD algorithm shows substantial improvement in handling non-uniform clusters. Additionally, the UN-MCCD and SUN-MCCD algorithms address the limitations of existing methods in high-dimensional spaces by utilizing Nearest Neighbor Distances (NND) for clustering and outlier detection. Our results indicate that these novel algorithms offer substantial advancements in the accuracy and adaptability of outlier detection, providing a valuable tool for various real-world applications. Keyword: Outlier detection, Graph-based clustering, Cluster catch digraphs, $k$-nearest-neighborhood, Mutual catch graphs, Nearest neighbor distance.
利用群集捕捉图谱检测离群点
本文介绍了一种基于簇捕获图(CCD)的新型离群点检测算法系列,该算法专门用于解决高维度和不同簇形状带来的挑战,而这些挑战会降低大多数传统离群点检测方法的性能。我们提出了具有相互捕捉图的基于均匀性的 CCD(U-MCCD)、具有相互捕捉图的基于均匀性和邻居的 CCD(UN-MCCD),以及它们的形状自适应变体(SU-MCCD 和 SUN-MCCD),旨在检测具有任意聚类形状和高维度的数据集中的离群值。我们介绍了这些算法的优缺点,并提供了定义每种特定算法的动机或需要。通过全面的蒙特卡洛模拟,我们评估了这些算法的性能,并证明了我们的算法在各种设置和污染水平下的鲁棒性和有效性。我们还在各种实际数据集上展示了算法的应用。U-MCCD 算法能有效识别异常值,同时保持较高的真阴性率;SU-MCCD 算法在处理非均匀聚类方面有很大改进。此外,UN-MCCD 和 SU-MCCD 算法利用近邻距离(NND)进行聚类和离群点检测,解决了现有方法在高维空间中的局限性。我们的研究结果表明,这些新型算法在离群点检测的准确性和适应性方面取得了重大进步,为各种实际应用提供了宝贵的工具。关键词离群点检测、基于图的聚类、聚类捕获数字图、$k$-最近邻、相互捕获图、最近邻距离。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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