Latent Variable Models for Document Analysis

author: Wray Buntine, Faculty of Information Technology, Monash University
published: March 11, 2008,   recorded: March 2008,   views: 10409
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Description

Wray Buntine will consider various problems in document analysis (named entity recognition, natural language parsing, information retrieval), and look at various probabilistic graphical models and algorithms for addressing the problem. This will not be an extensive coverage of information extraction or natural language processing, but rather a look at some of the theory, methods and practice of particular cases, including the use of software environments.

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Reviews and comments:

Comment1 JureF, October 15, 2008 at 3:41 p.m.:

Part 2 of this lecture is not working..

Best regards,

Jure


Comment2 Eric Cramber, August 23, 2021 at 9:39 p.m.:

Nice article


Comment3 Jann Bordia, August 23, 2021 at 9:42 p.m.:

Yes of course https://www.toppr.com/guides/english/...

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