Feature Selection
Feature selection aims to identify the most relevant subset of features from a larger dataset, improving model performance, interpretability, and efficiency. Current research emphasizes developing novel algorithms, including those based on neural networks (e.g., RelChaNet), genetic algorithms, and large language models (LLMs), to select features effectively and efficiently, often incorporating techniques like causal inference and uncertainty quantification. These advancements are crucial for various applications, such as medical diagnosis, financial prediction, and recommender systems, where reducing dimensionality and improving model explainability are paramount. The field is also actively exploring new evaluation metrics and addressing challenges like fairness and privacy in feature selection.
Papers
Variational Autoencoder Kernel Interpretation and Selection for Classification
Fábio Mendonça, Sheikh Shanawaz Mostafa, Fernando Morgado-Dias, Antonio G. Ravelo-García
Examining stability of machine learning methods for predicting dementia at early phases of the disease
Sinan Faouri, Mahmood AlBashayreh, Mohammad Azzeh
Neural Greedy Pursuit for Feature Selection
Sandipan Das, Alireza M. Javid, Prakash Borpatra Gohain, Yonina C. Eldar, Saikat Chatterjee
eCDT: Event Clustering for Simultaneous Feature Detection and Tracking-
Sumin Hu, Yeeun Kim, Hyungtae Lim, Alex Junho Lee, Hyun Myung
A-SFS: Semi-supervised Feature Selection based on Multi-task Self-supervision
Zhifeng Qiu, Wanxin Zeng, Dahua Liao, Ning Gui