Back to Search Start Over

Identifying the Patterns of Author-Generated Tags to Library and Information Science Papers in The Academic Social Networks: Focusing on Academia.edu.

Authors :
Saadat, Rasul
Shabani, Ahmad
Asemi, Asefeh
Sohrabi, Mehrdad Cheshmeh
Ravari, Mohammad Tavakolizadeh
Source :
Knowledge Organization; 2024, Vol. 51 Issue 1, p26-37, 12p
Publication Year :
2024

Abstract

This research aims to identify some patterns of author (as user) generated tags to the papers of library and information science field in Academia.edu. The research method is typically based on text analysis and word frequency distribution. The population contains over 6000 papers tagged in Academia.edu, and their abstracts were extracted from 159 English journals of the library and information science (LIS) field in the Scopus database. The growth of different types of tags in terms of the number of their words (one-word, two-word, three-word, and four-word and more), as well as the total number of tags over time, appeared as a logistic curve. It was also found that two-word tags had the most matching (54.92%) and four-word tags or more the least matching (1.76%) with different sections of papers (title, abstract, and authors' keywords). The total tags matched 7.5% with the title, 76.61% with the abstract, and 15.89% with the authors' keywords. Regarding the reuse of tags, it was revealed that on the one hand, 38.8% of the tags had been reused; on the other hand, 16% of the tags were reused in the first year, and more than 50% of the tags were reused in the first three years. Finally, it can be said that the users' consensus on specific terms can identify the new patterns of users' tagging at least partially compatible with professional indexing concepts, and by focusing on the most widely used tags and their sustainable distribution, the weighting of indexing terms and even classification schemes may be achieved. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
09437444
Volume :
51
Issue :
1
Database :
Supplemental Index
Journal :
Knowledge Organization
Publication Type :
Academic Journal
Accession number :
176421622
Full Text :
https://doi.org/10.5771/0943-7444-2024-1-26