New Techniques in Optimization and Their Applications to Deep Learning and Related Inverse Problems
Presenter
February 8, 2018
Abstract
Stanley Osher - University of California, Los Angeles (UCLA), Mathematics
We will draw from some of our new results in optimization, often related to partial differential equations, to improve performance of algorithms ranging from data dependent activation in deep learning, training quantized neural networks, optimizing neural networks solving the phase lift problem and diagnosing forward operator error. (Joint with many people.)