Optimization for Data Analysis
Offered By: Society for Industrial and Applied Mathematics via YouTube
Course Description
Overview
Explore a comprehensive tutorial on optimization techniques for data analysis and machine learning. Delve into kernel learning, regression, graph analysis, neural networks, and low-rank matrix analysis problems formulated as optimization challenges. Understand the role of regularization in promoting useful solution structures. Learn about primary algorithmic techniques, with a focus on gradient and stochastic gradient methods. Divided into two parts with a Q&A session, this 1-hour 51-minute presentation by Stephen Wright from the University of Wisconsin-Madison covers essential concepts for researchers and practitioners in the field of data science and applied mathematics.
Syllabus
Optimization for Data Analysis
Taught by
Society for Industrial and Applied Mathematics
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