A topic modeling‐based bibliometric exploration of automatic summarization research

Author:

Chen Xieling1,Xie Haoran2ORCID,Tao Xiaohui3ORCID,Xu Lingling4,Wang Jingjing5,Dai Hong‐Ning6,Wang Fu Lee4ORCID

Affiliation:

1. School of Education Guangzhou University Guangzhou China

2. Department of Computing and Decision Sciences Lingnan University Hong Kong China

3. School of Mathematics, Physics, and Computing University of Southern Queensland Toowoomba Queensland Australia

4. School of Science and Technology Hong Kong Metropolitan University Hong Kong China

5. School of Computer Science Hangzhou Dianzi University Hangzhou China

6. Department of Computer Science Hong Kong Baptist University Hong Kong China

Abstract

AbstractThe surge in text data has driven extensive research into developing diverse automatic summarization approaches to effectively handle vast textual information. There are several reviews on this topic, yet no large‐scale analysis based on quantitative approaches has been conducted. To provide a comprehensive overview of the field, this study conducted a bibliometric analysis of 3108 papers published from 2010 to 2022, focusing on automatic summarization research regarding topics and trends, top sources, countries/regions, institutions, researchers, and scientific collaborations. We have identified the following trends. First, the number of papers has experienced 65% growth, with the majority being published in computer science conferences. Second, Asian countries and institutions, notably China and India, actively engage in this field and demonstrate a strong inclination toward inter‐regional international collaboration, contributing to more than 24% and 20% of the output, respectively. Third, researchers show a high level of interest in multihead and attention mechanisms, graph‐based semantic analysis, and topic modeling and clustering techniques, with each topic having a prevalence of over 10%. Finally, scholars have been increasingly interested in self‐supervised and zero/few‐shot learning, multihead and attention mechanisms, and temporal analysis and event detection. This study is valuable when it comes to enhancing scholars' and practitioners' understanding of the current hotspots and future directions in automatic summarization.This article is categorized under: Algorithmic Development > Text Mining

Funder

National Natural Science Foundation of China

Publisher

Wiley

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