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Concrete Applications of Submodular Theory in ML and NLP

Offered By: Paul G. Allen School via YouTube

Tags

Machine Learning Courses Computer Vision Courses Parallel Computing Courses Clustering Courses

Course Description

Overview

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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

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