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Unpublished Paper
Integrating Probabilistic Extraction Models and Data Mining to Discover Relations and Patterns in Text
(2006)
  • Aron Culotta
  • Andrew McCallum, University of Massachusetts - Amherst
  • Jonathon Betz
Abstract
In order for relation extraction systems to obtain human-level performance, they must be able to incorporate relational patterns inherent in the data (for example, that one's sister is likely one's mother's daughter, or that children are likely to attend the same college as their parents). Hand-coding such knowledge can be time-consuming and inadequate. Additionally, there may exist many interesting, unknown relational patterns that both improve extraction performance and provide insight into text. We describe a probabilistic extraction model that provides mutual benefits to both ``top-down'' relational pattern discovery and ``bottom-up'' relation extraction.
Disciplines
Publication Date
2006
Comments
This is the pre-published version harvested from CIIR.
Citation Information
Aron Culotta, Andrew McCallum and Jonathon Betz. "Integrating Probabilistic Extraction Models and Data Mining to Discover Relations and Patterns in Text" (2006)
Available at: http://works.bepress.com/andrew_mccallum/133/