Close category search window
 

Textual resource acquisition and engineering

Full text access may be available

To access full text, please use your member or institutional sign in.


This paper appears in:
IBM Journal of Research and Development
Date of Publication: May-June 2012
Author(s): Chu-Carroll, J.
IBM Research Division, Thomas J. Watson Research Center, Yorktown Heights, NY, USA
Fan, J. ;  Schlaefer, N. ;  Zadrozny, W.
Volume: 56,   Issue: 3.4
On Page(s): 4:1 - 4:11
Product Type: Journals & Magazines

Available Formats Non-Member Price Member Price
US31 US31
Learn how you can qualify for the best price for the item!
  • Email
  • Print
  • Rights And Permissions

Abstract

A key requirement for high-performing question-answering (QA) systems is access to high-quality reference corpora from which answers to questions can be hypothesized and evaluated. However, the topic of source acquisition and engineering has received very little attention so far. This is because most existing systems were developed under organized evaluation efforts that included reference corpora as part of the task specification. The task of answering Jeopardy!™ questions, on the other hand, does not come with such a well-circumscribed set of relevant resources. Therefore, it became part of the IBM Watson™ effort to develop a set of well-defined procedures to acquire high-quality resources that can effectively support a high-performing QA system. To this end, we developed three procedures, i.e., source acquisition, source transformation, and source expansion. Source acquisition is an iterative development process of acquiring new collections to cover salient topics deemed to be gaps in existing resources based on principled error analysis. Source transformation refers to the process in which information is extracted from existing sources, either as a whole or in part, and is represented in a form that the system can most easily use. Finally, source expansion attempts to increase the coverage in the content of each known topic by adding new information as well as lexical and syntactic variations of existing information extracted from external large collections. In this paper, we discuss the methodology that we developed for IBM Watson for performing acquisition, transformation, and expansion of textual resources. We demonstrate the effectiveness of each technique through its impact on candidate recall and on end-to-end QA performance.

Note: The Institute of Electrical and Electronics Engineers, Incorporated is distributing this Article with permission of the International Business Machines Corporation (IBM) who is the exclusive owner. The recipient of this Article may not assign, sublicense, lease, rent or otherwise transfer, reproduce, prepare derivative works, publicly display or perform, or distribute the Article.  

Index Terms

Index Terms are available to subscribers and IEEE members.

 





Need Help?


IEEE Advancing Technology for Humanity About IEEE Xplore | Contact | Help | Privacy & Security | Terms of Use | Nondiscrimination Policy | Accessibility | Site Map

A non-profit organization, IEEE is the world's largest professional association for the advancement of technology.
© Copyright 2012 IEEE - All rights reserved. Use of this web site signifies your agreement to the terms and conditions.