Automatic Discovery of Word Semantic Relations

Authors: Dias, GaelMoraliyski, RumenCordeiro, JoaoDoucet, AntoineAhonen-Myka, Helena
Issue Date: 2010-11-22
ISBN: 9789544236489
URI: http://hdl.handle.net/10525/1469 Copy to clipboard
Abstract: In this paper, we propose an unsupervised methodology to automatically discover pairs of semantically related words by highlighting their local environment and evaluating their semantic similarity in local and global semantic spaces. This proposal di®ers from previous research as it tries to take the best of two different methodologies i.e. semantic space models and information extraction models. It can be applied to extract close semantic relations, it limits the search space and it is unsupervised.
Language: en
Publisher: University Press "Paisii Hilendarski", PlovdivSubject: SynonymyLanguage Acquisition
Type: Article