A memory-based approach to learning shallow natural language patterns

Shlomo Argamon-Engelson, I. Dagan, Yuval Krymolowski

Research output: Chapter in Book/Report/Conference proceedingConference contributionpeer-review

Abstract

Recognizing shallow linguistic patterns, such as basic syntactic relationships between words, is a common task in applied natural language and text processing. The common practice for approaching this task is by tedious manual definition of possible pattern structures, often in the form of regular expressions or finite automata. This paper presents a novel memory-based learning method that recognizes shallow patterns in new text based on a bracketed training corpus. The examples are stored as-is, in efficient data structures. Generalization is performed on-line at recognition time by comparing subsequences of the new text to positive and negative evidence in the corpus. This way, no information in the training is lost, as can happen in other learning systems that construct a single generalized model at the time of training. The paper presents experimental results for recognizing noun phrase, subject-verb and verb-object patterns in English.
Original languageAmerican English
Title of host publication36th Annual Meeting of the Association for Computational Linguistics (ACL)
StatePublished - 1998

Bibliographical note

Place of conference:Montreal, Canada

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