Behavioral Sciences (Sep 2024)

User Sentiment Analysis Based on Securities Application Elements

  • Minji Kim,
  • Subeen Kim,
  • Yoonha Park,
  • Sangwoo Bahn,
  • Sung Hee Ahn,
  • Bhavadharani NambiNarayanan

DOI
https://doi.org/10.3390/bs14090814
Journal volume & issue
Vol. 14, no. 9
p. 814

Abstract

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Designing securities applications for mobile devices is challenging due to their inherent complexity, necessitating improvement through the analysis of online reviews. However, research applying deep learning techniques to the sentiment analysis of Korean text remains limited. This study explores the use of Aspect-Based Sentiment Analysis (ABSA) as an effective alternative to traditional user research methods for securities application design. By analyzing large volumes of text-based user review data of Korean securities applications, the study identifies critical elements like “update”, “screen”, “chart”, “login”, “access”, “authentication”, “account”, and “transaction”, revealing nuanced user sentiments through techniques such as PMI, SVD, and Word2Vec. ABSA offers deeper insights compared to overall ratings, uncovering hidden areas of dissatisfaction despite positive biases in reviews. This research demonstrates the scalability and cost-effectiveness of ABSA in mobile-application design research.

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