Mathematics (Sep 2022)

Semi-Automatic Approaches for Exploiting Shifter Patterns in Domain-Specific Sentiment Analysis

  • Pavel Brazdil,
  • Shamsuddeen H. Muhammad,
  • Fátima Oliveira,
  • João Cordeiro,
  • Fátima Silva,
  • Purificação Silvano,
  • António Leal

DOI
https://doi.org/10.3390/math10183232
Journal volume & issue
Vol. 10, no. 18
p. 3232

Abstract

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This paper describes two different approaches to sentiment analysis. The first is a form of symbolic approach that exploits a sentiment lexicon together with a set of shifter patterns and rules. The sentiment lexicon includes single words (unigrams) and is developed automatically by exploiting labeled examples. The shifter patterns include intensification, attenuation/downtoning and inversion/reversal and are developed manually. The second approach exploits a deep neural network, which uses a pre-trained language model. Both approaches were applied to texts on economics and finance domains from newspapers in European Portuguese. We show that the symbolic approach achieves virtually the same performance as the deep neural network. In addition, the symbolic approach provides understandable explanations, and the acquired knowledge can be communicated to others. We release the shifter patterns to motivate future research in this direction.

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