In Pursuit of Deciphering ReLU Networks and Beyond

发布时间:2023-04-21浏览次数:385

题目:In Pursuit of Deciphering ReLU Networks and Beyond


报告人:范凤磊(香港中文大学)


时间:424星期一),09:30-10:30


地点:明德楼B201-1


摘要:Deep learning, represented by deep artificial neural networks, has been dominating numerous important research fields in the past decade. Although deep learning performs excellently in many tasks, it is notoriously a black box model. A neural network with the widely used ReLU activation is a piecewise linear function over polytopes, which has a simple functional structure. To enhance the interpretability of deep learning, it is of great importance to figure out the properties of polytopes and decipher the functional structure of a ReLU network. In collaboration with leading peer groups from Harbin Institute of Technology, Cornell University, BIGAI, and RIKEN AIP, we dedicate ourselves to answering the following fundamental questions: what kind of functions does a ReLU network learn? and how can we leverage the enhanced understanding to build novel machine learning models? I will share with you our work and discuss issues and opportunities in the field. We welcome interaction with prospective students, postdoctoral fellows, and new collaborators.

 




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