Scalable matching of industry models - A case study
Brian Byrne, Achille Fokoue, et al.
OM 2009
Automatic open-domain Question Answering has been a long standing research challenge in the AI community. IBM Research undertook this challenge with the design of the DeepQA architecture and the implementation of Watson. This paper addresses a specific subtask of Deep QA, consisting of predicting the Lexical Answer Type (LAT) of a question. Our approach is completely unsupervised and is based on PRISMATIC, a large-scale lexical knowledge base automatically extracted from a Web corpus. Experiments on the Jeopardy! data shows that it is possible to correctly predict the LAT in a substantial number of questions. This approach can be used for general purpose knowledge acquisition tasks such as frame induction from text. Copyright © 2012, IGI Global.
Brian Byrne, Achille Fokoue, et al.
OM 2009
C. Wang, Aditya Kalyanpur, et al.
IBM J. Res. Dev
Robert Schiaffino, Achille Fokoue, et al.
WoMO 2007
J.W. Murdock, Aditya Kalyanpur, et al.
IBM J. Res. Dev