Why Deep Learning Works: Implicit Self-Regularization in Deep Neural Networks
Offered By: Simons Institute via YouTube
Course Description
Overview
Explore the underlying mechanisms of deep learning's success in this insightful lecture by Michael Mahoney from the International Computer Science Institute and UC Berkeley. Delve into the concept of implicit self-regularization in deep neural networks and its role in the effectiveness of deep learning algorithms. Gain a deeper understanding of the mathematical foundations behind these powerful machine learning techniques, with a focus on randomized numerical linear algebra and its applications. Discover how these principles contribute to the remarkable performance of deep learning models across various domains.
Syllabus
Why Deep Learning Works: Implicit Self-Regularization in Deep Neural Networks
Taught by
Simons Institute
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