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
Related Courses
Big Data Analytics in HealthcareGeorgia Institute of Technology via Udacity Aplicaciones de la teoría de grafos a la vida real
Miríadax Алгебраическая теория графов
Novosibirsk State University via Coursera Precalculus: Relations and Functions
Johns Hopkins University via Coursera IELTS Academic Writing Part 1 - Graphs and Tables
Udemy