Upload

This video is unavailable.

Topic Models Applied to Online News and Reviews

GoogleTechTalks GoogleTechTalks·1,785 videos
151,860

Subscription preferences

Loading...

Loading icon Loading...

Working...
6,044
Like     Dislike 2

Sign in to YouTube

Sign in with your Google Account (YouTube, Google+, Gmail, Orkut, Picasa, or Chrome) to like GoogleTechTalks's video.

Sign in to YouTube

Sign in with your Google Account (YouTube, Google+, Gmail, Orkut, Picasa, or Chrome) to dislike GoogleTechTalks's video.

Sign in to YouTube

Sign in with your Google Account (YouTube, Google+, Gmail, Orkut, Picasa, or Chrome) to add GoogleTechTalks's video to your playlist.

Uploaded on Aug 12, 2010

Google Tech Talk
August 11, 2010

ABSTRACT

Presented by Alice Oh.

Probabilistic topic models are useful for uncovering the underlying semantic structure of a collection of documents. We take a simple and widely used topic model, the Latent Dirichlet Allocation (LDA, Blei et al. 2003) and extend it in two ways. First, we construct topic chains to understand the dynamic semantic structure of an online news corpus, and second, we develop a unification model of sentiment and aspect to discover the detailed semantics of user generated reviews.

For the topic chains research, we present a framework for comparing and clustering the topics discovered by LDA. We discuss how to interpret the resulting topic chains to understand the general topic trends, temporary issues, and the focus shifts within the topic chains. We applied the topic chains framework to 9 months of online news and present the results.

For the aspect-sentiment unification model (ASUM) research, we base our model on an observation that users evaluate various aspects of a product in a review, such as the lens of the camera or the LCD display of a laptop, and each sentence usually represents one aspect and a corresponding sentiment toward that aspect. So we propose a sentence-LDA (SLDA) with a constraint that all words in a single sentence are generated from one aspect. Then we extend SLDA to Aspect and Sentiment Unification Model (ASUM) to jointly discover pairs of {aspect, sentiment} which we call senti-aspects. We applied SLDA and ASUM to reviews of electronic devices and restaurants and present the results.

Alice Oh is an Assistant Professor of Computer Science at Korea Advanced Institute of Science and Technology. She leads her research group, Users and Information Lab, with the vision of delivering information to satisfy the user. To that end, she studies and employs methods from machine learning, human-computer interaction, and statistical natural language processing. Alice completed her M.S. in Language and Information Technologies at CMU and her Ph.D. in Computer Science at MIT.

Loading icon Loading...

Loading icon Loading...

Loading icon Loading...

The interactive transcript could not be loaded.

Loading icon Loading...

Loading icon Loading...

Ratings have been disabled for this video.
Rating is available when the video has been rented.
This feature is not available right now. Please try again later.

All Comments (4)

Sign in now to post a comment!
  • minireference

    Excellent presentation whichïŧŋ highlights several interesting post-LDA ideas.

    ·

    Sign in to YouTube

    Sign in with your YouTube Account (YouTube, Google+, Gmail, Orkut, Picasa, or Chrome) to rate minireference's comment.

    Sign in to YouTube

    Sign in with your YouTube Account (YouTube, Google+, Gmail, Orkut, Picasa, or Chrome) to rate minireference's comment.
  • Jowanza Joseph

    +1ïŧŋ

    ·

    Sign in to YouTube

    Sign in with your YouTube Account (YouTube, Google+, Gmail, Orkut, Picasa, or Chrome) to rate Jowanza Joseph's comment.

    Sign in to YouTube

    Sign in with your YouTube Account (YouTube, Google+, Gmail, Orkut, Picasa, or Chrome) to rate Jowanza Joseph's comment.
    in reply to fsahito (Show the comment)
  • fsahito

    Great Lecture!ïŧŋ Thank you very much.

    ·

    Sign in to YouTube

    Sign in with your YouTube Account (YouTube, Google+, Gmail, Orkut, Picasa, or Chrome) to rate fsahito's comment.

    Sign in to YouTube

    Sign in with your YouTube Account (YouTube, Google+, Gmail, Orkut, Picasa, or Chrome) to rate fsahito's comment.
  • Loading comment...
Loading...
Loading...
Working...
Sign in to add this to Watch Later