Relational Learning of Pattern-Match Rules for Information Extraction


Information extraction is a form of shallow text processing which locates a specified set of relevant items in natural language documents. Such systems can be useful, but require domain-specific knowledge and rules, and are time-consuming and difficult to build by hand, making infomation extraction a good testbed for the application of machine learning techniques to natural language processing. This paper presents a system, RAPIER, that takes pairs of documents and filled templates and induces pattern-match rules that directly extract fillers for the slots in the template. The learning algorithm incorporates techniques from several inductive logic programming systems and learns unbounded patterns that include constraints on the words and part-of-speech tags surrounding the filler. Encouraging results are presented on learning to extract information from computer job postings from the newsgroup misc. jobs. offered.

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@inproceedings{Califf1997RelationalLO, title={Relational Learning of Pattern-Match Rules for Information Extraction}, author={Mary Elaine Califf and Raymond J. Mooney}, booktitle={CoNLL}, year={1997} }