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GIORGIO VASSALLO

Semantic Word Error Rate for Sentence Similarity

  • Autori: Spiccia, C.; Augello, A.; Pilato, G.; Vassallo, G.
  • Anno di pubblicazione: 2016
  • Tipologia: eedings
  • Parole Chiave: Latent Semantic Analysis; LSA; Semantic Word Error Rate; sentence resemblance; sentence similarity measure; SWER; WER; Word Error Rate; word relatedness; Artificial Intelligence; Computer Networks and Communications; Information Systems
  • OA Link: http://hdl.handle.net/10447/220431

Abstract

Sentence similarity measures have applications in several tasks, including: Machine Translation, Paraphrase Identification, Speech Recognition, Question-answering and Text Summarization. However, measures designed for these tasks are aimed at assessing equivalence rather than resemblance, partly departing from human cognition of similarity. While this is reasonable for these activities, it hinders the applicability of sentence similarity measures to other tasks. We therefore propose a new sentence similarity measure specifically designed for resemblance evaluation, in order to cover these fields better. Experimental results are discussed.