Outlier Detection
Outlier detection aims to identify data points deviating significantly from the norm within a dataset, a crucial task across diverse fields. Current research emphasizes developing robust algorithms that handle high-dimensionality, varying cluster shapes, and the challenges of unsupervised learning, with approaches ranging from ensemble methods and graph-based techniques to generative models and vision-language models. These advancements improve accuracy and interpretability, particularly in applications like recommender systems, anomaly detection in images and time series, and ensuring the reliability of machine learning models in safety-critical domains. The ongoing focus is on addressing algorithmic bias, enhancing explainability, and developing efficient methods for large-scale datasets.
Papers
PIKS: A Technique to Identify Actionable Trends for Policy-Makers Through Open Healthcare Data
A. Ravishankar Rao, Subrata Garai, Soumyabrata Dey, Hang Peng
A system for exploring big data: an iterative k-means searchlight for outlier detection on open health data
A. Ravishankar Rao, Daniel Clarke, Subrata Garai, Soumyabrata Dey
MSS-PAE: Saving Autoencoder-based Outlier Detection from Unexpected Reconstruction
Xu Tan, Jiawei Yang, Junqi Chen, Sylwan Rahardja, Susanto Rahardja
OutCenTR: A novel semi-supervised framework for predicting exploits of vulnerabilities in high-dimensional datasets
Hadi Eskandari, Michael Bewong, Sabih ur Rehman