English

Sparsity-based Feature Selection for Anomalous Subgroup Discovery

Machine Learning 2022-01-07 v1 Artificial Intelligence Signal Processing

Abstract

Anomalous pattern detection aims to identify instances where deviation from normalcy is evident, and is widely applicable across domains. Multiple anomalous detection techniques have been proposed in the state of the art. However, there is a common lack of a principled and scalable feature selection method for efficient discovery. Existing feature selection techniques are often conducted by optimizing the performance of prediction outcomes rather than its systemic deviations from the expected. In this paper, we proposed a sparsity-based automated feature selection (SAFS) framework, which encodes systemic outcome deviations via the sparsity of feature-driven odds ratios. SAFS is a model-agnostic approach with usability across different discovery techniques. SAFS achieves more than 3×3\times reduction in computation time while maintaining detection performance when validated on publicly available critical care dataset. SAFS also results in a superior performance when compared against multiple baselines for feature selection.

Keywords

Cite

@article{arxiv.2201.02008,
  title  = {Sparsity-based Feature Selection for Anomalous Subgroup Discovery},
  author = {Girmaw Abebe Tadesse and William Ogallo and Catherine Wanjiru and Charles Wachira and Isaiah Onando Mulang' and Vibha Anand and Aisha Walcott-Bryant and Skyler Speakman},
  journal= {arXiv preprint arXiv:2201.02008},
  year   = {2022}
}
R2 v1 2026-06-24T08:41:48.158Z