Discriminative Classification with Incomplete Data - Lecture
Offered By: Center for Language & Speech Processing(CLSP), JHU via YouTube
Course Description
Overview
Explore a comprehensive lecture on discriminative classification methods for structured data with incomplete information. Delve into the challenges of classifying sequences in various fields such as speech recognition, image and text classification, and computational biology. Learn about a new framework based on generalizations of the maximum entropy principle, designed to address issues like partially known examples, shortage of labeled training data, and abstract category labels. Discover how this approach accommodates uncertain or missing labels, extends to anomaly detection, and incorporates large margin classification with a Bayesian perspective. Gain insights into the technical aspects, experimental results, and current limitations of this method. Understand how this framework subsumes other standard discriminative methods like support vector machines. The lecture, delivered by MIT's Tommi S. Jaakkola, draws from joint work with Marina Meila and Tony Jebara, offering valuable knowledge for researchers and practitioners in machine learning and statistical inference.
Syllabus
Discriminative Classification with Incomplete Data – Tommi S. Jaakkola (MIT)
Taught by
Center for Language & Speech Processing(CLSP), JHU
Related Courses
علم اجتماع المايكروباتKing Saud University via Rwaq (رواق) Statistical Learning with R
Stanford University via edX More Data Mining with Weka
University of Waikato via Independent The Caltech-JPL Summer School on Big Data Analytics
California Institute of Technology via Coursera Machine Learning for Musicians and Artists
Goldsmiths University of London via Kadenze