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Large-scale evaluation of dependency-based DSMs: Are they worth the effort?

2017-04-01EACL 2017Unverified0· sign in to hype

Gabriella Lapesa, Stefan Evert

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Abstract

This paper presents a large-scale evaluation study of dependency-based distributional semantic models. We evaluate dependency-filtered and dependency-structured DSMs in a number of standard semantic similarity tasks, systematically exploring their parameter space in order to give them a ``fair shot'' against window-based models. Our results show that properly tuned window-based DSMs still outperform the dependency-based models in most tasks. There appears to be little need for the language-dependent resources and computational cost associated with syntactic analysis.

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