• Documents
  • Authors
  • Tables
  • Other Seers ▼
    RefSeer AckSeer CollabSeer SeerSeer
  • Log in
  • Sign up
  • MetaCart

CiteSeerX logo

Advanced Search Include Citations
Advanced Search Include Citations | Disambiguate

What’s worthy of comment? content and comment volume in political blogs. 2010 (0)

by T Yano, N A Smith
Venue:In review
Add To MetaCart

Tools

Sorted by:
Results 1 - 3 of 3

Text as Actuator: Text-Driven Response Modeling and Prediction in Politics

by Tae Yano
"... ..."
Abstract - Add to MetaCart
Abstract not found

Table of Contents Preface..............................................................................................5 Sentiment Analysis: A Fascinating Problem...................................7

by Bing Liu , 2012
"... ..."
Abstract - Add to MetaCart
Abstract not found

Text-Driven Forecasting

by Noah A. Smith , 2010
"... Forecasting the future hinges on understanding the present. The web—particularly the social web—now gives us an up-to-the-minute snapshot of the world as it is and as it is perceived by many people, right now, but that snapshot is distributed in a way that is incomprehensible to a human. Much of thi ..."
Abstract - Add to MetaCart
Forecasting the future hinges on understanding the present. The web—particularly the social web—now gives us an up-to-the-minute snapshot of the world as it is and as it is perceived by many people, right now, but that snapshot is distributed in a way that is incomprehensible to a human. Much of this data is encoded in text, which is noisy, unstructured, and sparse; yet recent developments in natural language processing now permit us to analyze text and connect it to real-world measurable phenomena through statistical models. We propose text-driven forecasting as a challenge for natural language processing and machine learning: Given a body of text T pertinent to a social phenomenon, make a concrete prediction about a measurement M of that phenomenon, obtainable only in the future, that rivals the best-known methods for forecasting M. We seek methods that work in many settings, for many kinds of text and many kinds of measurements. Accurate text-driven forecasting will be of use to the intelligence community, policymakers, and businesses. The use of statistical models is the norm of natural language processing methods, making it straightforward to develop models that provide posterior probabilities over measurements. Evaluation and comparison of forecasting algorithms is straightforward and inexpensive. We present encouraging recent results across several domains, emphasizing that a broad suite of forecasting problems and text sources will best support progress on this task. Further, advances in text-driven forecasting will have broad impact in natural language processing, giving a concrete, theory-independent platform that encourages exploration of new ideas for tackling various aspects of text-oriented computational intelligence. The views in this paper are my own, but they were strongly influenced through collaboration with
The National Science Foundation
  • About CiteSeerX
  • Submit Documents
  • Privacy Policy
  • Help
  • Data
  • Source
  • Contact Us

Developed at and hosted by The College of Information Sciences and Technology

© 2007-2010 The Pennsylvania State University