Integrating Co-occurrence Statistics with Information Extraction for Robust Retrieval of Protein Interactions from Medline. Bunescu, R., Mooney, R., Ramani, A., & Marcotte, E.
abstract   bibtex   
The task of mining relations from collections of documents is usually approached in two different ways. One type of systems do relation extraction from individual sentences, followed by an aggregation of the results over the entire collection. Other systems follow an entirely different approach, in which co-occurrence counts are used to determine whether the mentioning together of two entities is due to more than simple chance. We show that increased extraction performance can be obtained by combining the two approaches into an integrated relation extraction model.
@article{bunescu_integrating_nodate,
	title = {Integrating {Co}-occurrence {Statistics} with {Information} {Extraction} for {Robust} {Retrieval} of {Protein} {Interactions} from {Medline}},
	abstract = {The task of mining relations from collections of documents is usually approached in two different ways. One type of systems do relation extraction from individual sentences, followed by an aggregation of the results over the entire collection. Other systems follow an entirely different approach, in which co-occurrence counts are used to determine whether the mentioning together of two entities is due to more than simple chance. We show that increased extraction performance can be obtained by combining the two approaches into an integrated relation extraction model.},
	language = {en},
	author = {Bunescu, Razvan and Mooney, Raymond and Ramani, Arun and Marcotte, Edward},
	pages = {8},
}

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