Outlyingness Scores with Cluster Catch Digraphs
PositiveArtificial Intelligence
The introduction of Outbound Outlyingness Score (OOS) and Inbound Outlyingness Score (IOS) marks a significant advancement in outlier detection methodologies. These scores leverage graph-, density-, and distribution-based techniques to enhance the interpretability of results, particularly in high-dimensional datasets with diverse cluster shapes. The effectiveness of both OOS and IOS is underscored by their ability to identify global and local outliers while remaining robust against data collinearity and masking issues. Extensive Monte Carlo simulations reveal that these new scores provide substantial improvements over traditional CCD-based methods, with IOS achieving the best performance overall. This development is particularly relevant as it addresses the growing complexity of data analysis, offering researchers and practitioners more reliable tools for identifying anomalies in various applications.
— via World Pulse Now AI Editorial System