Inteligencia Artificial (May 2019)

Building Dynamic Lexicons for Sentiment Analysis

  • Nicolás Mechulam,
  • Damián Salvia,
  • Aiala Rosá,
  • Mathias Etcheverry

DOI
https://doi.org/10.4114/intartif.vol22iss64pp1-13
Journal volume & issue
Vol. 22, no. 64

Abstract

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Nowadays, many approaches for Sentiment Analysis (SA) rely on affective lexicons to identify emotions transmitted in opinions. However, most of these lexicons do not consider that a word can express different sentiments in different predication domains, introducing errors in the sentiment inference. Due to this problem, we present a model based on a context-graph which can be used for building domain specic sentiment lexicons (DL: Dynamic Lexicons) by propagating the valence of a few seed words. For different corpora, we compare the results of a simple rule-based sentiment classier using the corresponding DL, with the results obtained using a general affective lexicon. For most corpora containing specic domain opinions, the DL reaches better results than the general lexicon.

Keywords