Deep Network
Deep networks, complex artificial neural networks with multiple layers, aim to learn intricate patterns from data by approximating complex functions. Current research focuses on improving their efficiency (e.g., through dataset distillation and novel activation functions), enhancing their interpretability (e.g., via re-label distillation and analysis of input space mode connectivity), and addressing challenges like noisy labels and domain shifts. These advancements are crucial for expanding the applicability of deep networks across diverse fields, from financial modeling and medical image analysis to time series classification and natural language processing, while simultaneously increasing their reliability and trustworthiness.
Papers
The Training Process of Many Deep Networks Explores the Same Low-Dimensional Manifold
Jialin Mao, Itay Griniasty, Han Kheng Teoh, Rahul Ramesh, Rubing Yang, Mark K. Transtrum, James P. Sethna, Pratik Chaudhari
Class based Influence Functions for Error Detection
Thang Nguyen-Duc, Hoang Thanh-Tung, Quan Hung Tran, Dang Huu-Tien, Hieu Ngoc Nguyen, Anh T. V. Dau, Nghi D. Q. Bui