Using Ontology to Analyze Sentiment of Comments on Vietnamese Social Media

Các tác giả

  • Hung Nguyen Viet Tác giả
  • Nguyen Anh Quan Tác giả
  • Nguyen Van Vu Tác giả
  • Phan Thi Yen Tác giả
  • Nguyen Hai Binh Tác giả
  • Phan Thi Thuy Nga Tác giả

Từ khóa:

Analyze Sentiment, Social Media, Ontology, Vietnamese, Opinion

Tóm tắt

Recently, there has been a growing trend in studies that employ ontology-based methods to analyze sentiment in social media comments in Vietnam. Ontology, a model comprising concepts, attributes, and relationships, serves as a knowledge reference framework for expressing emotions in comments. This approach enhances understanding of how Vietnamese individuals convey emotions on platforms such as YouTube, Facebook, and others. In contrast to traditional sentiment analysis methods, ontology aims to achieve more detailed and accurate sentiment analysis by leveraging semantic connections between concepts. Therefore, this paper proposes: (1) employing ontology for sentiment analysis in Vietnamese social media, (2) collecting and preprocessing comment data from popular platforms in Vietnam, (3) utilizing ontology to assign sentiment labels (positive, negative) to comments, (4) analyzing sentiment patterns and trends in comments, and (5) evaluating the performance of ontology-based methods versus traditional sentiment analysis. The findings of this study contribute to advancing social data analysis techniques and offer insights into user behaviors on Vietnamese social media platforms. Experiments also show that the proposed method achieves the best performance compared to other methods, with an accuracy of up to 0.8657 and an F1 score of up to 0.9174.

Đã xuất bản

2025-09-01

Số

Chuyên mục

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