Inverting Grice's Maxims to Learn Rules from Natural Language Extractions

NeurIPS 2011 Mohammad S. SorowerJanardhan R. DoppaWalker OrrPrasad TadepalliThomas G. DietterichXiaoli Z. Fern

We consider the problem of learning rules from natural language text sources. These sources, such as news articles and web texts, are created by a writer to communicate information to a reader, where the writer and reader share substantial domain knowledge... (read more)

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