A Theory of Multi-objective Machine Learning
Offered By: Simons Institute via YouTube
Course Description
Overview
Explore a comprehensive lecture on multi-objective machine learning presented by Nika Haghtalab from the University of California, Berkeley. Delve into the framework of multi-objective learning as a unifying paradigm for addressing robustness, collaboration, and fairness in machine learning. Discover how this approach aims to optimize complex and unstructured objectives using limited sampled data. Examine the relationship between multi-objective learning and classical and modern machine learning considerations, including generalization. Gain insights into technical tools with provable guarantees and review empirical evidence of their performance on important benchmarks. This talk, part of the Modern Paradigms in Generalization Boot Camp at the Simons Institute, offers a deep dive into the theory and practical applications of multi-objective machine learning.
Syllabus
A Theory of Multi-objective Machine Learning
Taught by
Simons Institute
Related Courses
Automata TheoryStanford University via edX Intro to Theoretical Computer Science
Udacity Computing: Art, Magic, Science
ETH Zurich via edX 理论计算机科学基础 | Introduction to Theoretical Computer Science
Peking University via edX Quantitative Formal Modeling and Worst-Case Performance Analysis
EIT Digital via Coursera