Concrete Applications of Submodular Theory in ML and NLP
Offered By: Paul G. Allen School via YouTube
Course Description
Overview
Explore a seminar on the applications of submodular theory in machine learning and natural language processing. Delve into how submodularity, a concept from economics and discrete mathematics, is becoming increasingly relevant in AI. Discover diverse real-world applications, including dynamic graphical models, clustering, summarization, computer vision, and parallel computing. Learn how submodular frameworks lead to efficient, scalable algorithms with high-quality solutions. Understand the importance of developing simple, mathematically rich machine learning constructs suited to real-world challenges. Gain insights into how practical applications have advanced the mathematical study of submodularity. This 57-minute talk, presented by J. Bilmes at the University of Washington's Computer Science and Engineering AI Seminar in February 2016, offers a comprehensive overview of this emerging field in AI research.
Syllabus
UW CSE AI Seminar '16: J. Bilmes, Concrete Applications of Submodular Theory in ML and NLP
Taught by
Paul G. Allen School
Related Courses
Graph Partitioning and ExpandersStanford University via NovoEd The Analytics Edge
Massachusetts Institute of Technology via edX More Data Mining with Weka
University of Waikato via Independent Mining Massive Datasets
Stanford University via edX The Caltech-JPL Summer School on Big Data Analytics
California Institute of Technology via Coursera