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Research topics and trends of the hashtag recommendation domain
- Source :
- Scientometrics. 126:2689-2735
- Publication Year :
- 2021
- Publisher :
- Springer Science and Business Media LLC, 2021.
-
Abstract
- In microblogging platforms, hashtags are used to annotate the microblogs for a more convenient categorization and analysis of the published contents. Due to the fast growth of the social network, the hashtag recommendation field has attracted the researchers’ attention most recently. In this study, a review of existing works in the hashtag recommendation filed is presented. After collecting all the papers in this field, the author keywords are exploited in order to extract popular topics and explore the evolution of them since their inception. In this regard, statistical analysis of the keywords, keyword-pairs co-occurrences, and the cluster analysis through the co-word data (co-word analysis) are performed. The obtained results demonstrate that there are four evolved thematic areas in this research field, including “SIMILARITY”, “HASHTAG-RECOMMENDATION”, “MACHINE-LEARNING”, and “POPULARITY-PREDICTION”. Besides, there are some popular themes in each thematic area, such as the “DEEP_LEARNING”, which has excellent future development potential. Similarly, the “SIMILARITY” and “TOPIC-MODEL” are two motor themes that have gained increased interest from researchers in recent studies. Eventually, the analysis results of the related works in the hashtag recommendation domain are utilized to extract the main approaches in this research area involving “DEEP LEARNING”, “TOPIC MODELING”, “SIMILARITY”, “CLASSIFICATION”, and “TOPICAL TRANSLATION”. The results’ implications and the future research directions determined that the researchers’ interest in the field of hashtag recommendation will increase rapidly.
- Subjects :
- Topic model
Social network
Computer science
Microblogging
business.industry
Deep learning
05 social sciences
General Social Sciences
Library and Information Sciences
050905 science studies
Data science
Field (computer science)
Computer Science Applications
Domain (software engineering)
Categorization
Similarity (psychology)
Social media
Artificial intelligence
0509 other social sciences
050904 information & library sciences
business
Subjects
Details
- ISSN :
- 15882861 and 01389130
- Volume :
- 126
- Database :
- OpenAIRE
- Journal :
- Scientometrics
- Accession number :
- edsair.doi...........737f927a660793335d6d68f51521fb95