MLLGJan 9, 2025

Outlyingness Scores with Cluster Catch Digraphs

arXiv:2501.05530v21 citationsh-index: 17
Originality Incremental advance
AI Analysis

This work addresses outlier detection for high-dimensional data with varying cluster shapes, offering incremental improvements in interpretability and robustness.

The paper tackles outlier detection in high-dimensional data by introducing two new outlyingness scores (OOS and IOS) based on Cluster Catch Digraphs, which show substantial improvements over existing methods, with IOS achieving the best overall performance in simulations.

This paper introduces two novel, outlyingness scores (OSs) based on Cluster Catch Digraphs (CCDs): Outbound Outlyingness Score (OOS) and Inbound Outlyingness Score (IOS). These scores enhance the interpretability of outlier detection results. Both OSs employ graph-, density-, and distribution-based techniques, tailored to high-dimensional data with varying cluster shapes and intensities. OOS evaluates the outlyingness of a point relative to its nearest neighbors, while IOS assesses the total ``influence" a point receives from others within its cluster. Both OSs effectively identify global and local outliers, invariant to data collinearity. Moreover, IOS is robust to the masking problems. With extensive Monte Carlo simulations, we compare the performance of both OSs with CCD-based, traditional, and state-of-the-art outlier detection methods. Both OSs exhibit substantial overall improvements over the CCD-based methods in both artificial and real-world data sets, particularly with IOS, which delivers the best overall performance among all the methods, especially in high-dimensional settings. Keywords: Outlier detection, Outlyingness score, Graph-based clustering, Cluster catch digraphs, High-dimensional data.

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