Enrichment of dictionaries to improve the automatic classification of feelings in postings related to the use of systems

  • Afonso Matheus Sousa Lima Universidade Federal do Ceará
  • Marilia Soares Mendes Universidade Federal do Ceará
  • Lívia Almada Cruz Universidade Federal do Ceará

Resumo


This work proposes an investigation to improve the efficiency of a lexical-based classifier, the SentiStrength, for automatic sentiment detection in postings related to the use of systems. To achieve this goal, the TF-IDF metric was used to select words that are related to the domain of the posts, which will enrich the dictionary used by the tool to generate the polarity of the posts. The efficiency of a dictionarie enriched with words in their root form and a dictionarie enriched with lematized words will also be investigated. The research was conducted with 2108 sentences extracted from the reviews section of the Play Store on urban mobility applications, such as Waze, Google Maps and GPS Brazil. One of the results obtained was a 7.3 % increase in the accuracy of the classifier when using enriched dictionaries.
Palavras-chave: Systems Evaluation, Sentiment Analysis, Lexical Classifiers
Publicado
20/05/2019
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LIMA, Afonso Matheus Sousa; MENDES, Marilia Soares; CRUZ, Lívia Almada. Enrichment of dictionaries to improve the automatic classification of feelings in postings related to the use of systems. In: SIMPÓSIO BRASILEIRO DE SISTEMAS DE INFORMAÇÃO (SBSI), 15. , 2019, Aracajú. Anais [...]. Porto Alegre: Sociedade Brasileira de Computação, 2019 . p. 71-78.