Distributional Semantics Beyond Words: Supervised Learning of Analogy and Paraphrase
Author(s) -
Peter D. Turney
Publication year - 2013
Publication title -
transactions of the association for computational linguistics
Language(s) - English
Resource type - Journals
ISSN - 2307-387X
DOI - 10.1162/tacl_a_00233
Subject(s) - paraphrase , computer science , natural language processing , similarity (geometry) , artificial intelligence , analogy , word (group theory) , distributional semantics , tuple , pairwise comparison , semantic similarity , noun , function (biology) , semantics (computer science) , linguistics , mathematics , philosophy , discrete mathematics , evolutionary biology , image (mathematics) , biology , programming language
There have been several efforts to extend distributional semantics beyond individual words, to measure the similarity of word pairs, phrases, and sentences (briefly, tuples; ordered sets of words, contiguous or noncontiguous). One way to extend beyond words is to compare two tuples using a function that combines pairwise similarities between the component words in the tuples. A strength of this approach is that it works with both relational similarity (analogy) and compositional similarity (paraphrase). However, past work required hand-coding the combination function for different tasks. The main contribution of this paper is that combination functions are generated by supervised learning. We achieve state-of-the-art results in measuring relational similarity between word pairs (SAT analogies and SemEval~2012 Task 2) and measuring compositional similarity between noun-modifier phrases and unigrams (multiple-choice paraphrase questions).
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