Distributed Distributional Similarities of Google Books Over the Centuries

LREC 2014 Martin RiedlRichard SteuerChris Biemann

This paper introduces a distributional thesaurus and sense clusters computed on the complete Google Syntactic N-grams, which is extracted from Google Books, a very large corpus of digitized books published between 1520 and 2008. We show that a thesaurus computed on such a large text basis leads to much better results than using smaller corpora like Wikipedia... (read more)

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