EXTRACTIVE SUMMARIZATION AS A GRAPH-BASED PROBLEM

  • Van-Hau Nguyen Hung Yen University of Technology and Education
  • Van-Chien Nguyen Ha Noi University of Technology and Science
  • Minh-Tien Nguyen Hung Yen University of Technology and Education
  • Le Chi Ngoc Hanoi University of Science and Technology
Keywords: Text Summarization, Graph-based methods, Extractive Summarization, Machine Learning

Abstract

Graph-based approaches have been successfully used in many domains (e.g., computer vision, recommendation system, big data, information extraction, etc.). In recently years, some studies have exploited the graph-based approach for extractive summarization and obtained significant results compared to other approaches. In this paper, we first encode an extractive summarization task into a graph-based problem. Then, we conduct several approaches on two well-known datasets: SoLSCSum and USAToday- CNN. Finally, we draw some insights, which would be helpful for the future research.

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Published
2020-10-12
How to Cite
Van-Hau Nguyen, Van-Chien Nguyen, Minh-Tien Nguyen, & Le Chi Ngoc. (2020). EXTRACTIVE SUMMARIZATION AS A GRAPH-BASED PROBLEM. UTEHY Journal of Applied Science and Technology, 27, 14-20. Retrieved from http://jst.utehy.edu.vn/index.php/jst/article/view/383