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Acquisition of semantic relations between terms: how far can we get with standard NLP tools?

2016-12-01WS 2016Unverified0· sign in to hype

Ina Roesiger, Julia Bettinger, Johannes Sch{\"a}fer, Michael Dorna, Ulrich Heid

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Abstract

The extraction of data exemplifying relations between terms can make use, at least to a large extent, of techniques that are similar to those used in standard hybrid term candidate extraction, namely basic corpus analysis tools (e.g. tagging, lemmatization, parsing), as well as morphological analysis of complex words (compounds and derived items). In this article, we discuss the use of such techniques for the extraction of raw material for a description of relations between terms, and we provide internal evaluation data for the devices developed. We claim that user-generated content is a rich source of term variation through paraphrasing and reformulation, and that these provide relational data at the same time as term variants. Germanic languages with their rich word formation morphology may be particularly good candidates for the approach advocated here.

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