Explore open access research and scholarly works from STORE - University of Staffordshire Online Repository

Advanced Search

Exploiting tweet sentiments in altmetrics large-scale data

Hassan, Saeed-Ul, Aljohani, Naif Radi, Tarar, Usman Iqbal, Safder, Iqra, Sarwar, Raheem, Alelyani, Salem and NAWAZ, Raheel (2023) Exploiting tweet sentiments in altmetrics large-scale data. Journal of Information Science, 49 (5). pp. 1229-1245. ISSN 0165-5515

[thumbnail of Hassan_et_al_Exploiting_tweet_sentiments_2021.pdf]
Preview
Text
Hassan_et_al_Exploiting_tweet_sentiments_2021.pdf - AUTHOR'S ACCEPTED Version (default)
Available under License Type All Rights Reserved.

Download (777kB) | Preview
Official URL: http://dx.doi.org/10.1177/01655515211043713

Abstract or description

This article aims to exploit social exchanges on scientific literature, specifically tweets, to analyse social media users’ sentiments towards publications within a research field. First, we employ the SentiStrength tool, extended with newly created lexicon terms, to classify the sentiments of 6,482,260 tweets associated with 1,083,535 publications provided by Altmetric.com. Then, we propose harmonic means-based statistical measures to generate a specialised lexicon, using positive and negative sentiment scores and frequency metrics. Next, we adopt a novel article-level summarisation approach to domain-level sentiment analysis to gauge the opinion of social media users on Twitter about the scientific literature. Last, we propose and employ an aspect-based analytical approach to mine users’ expressions relating to various aspects of the article, such as tweets on its title, abstract, methodology, conclusion or results section. We show that research communities exhibit dissimilar sentiments towards their respective fields. The analysis of the field-wise distribution of article aspects shows that in Medicine, Economics, Business and Decision Sciences, tweet aspects are focused on the results section. In contrast, in Physics and Astronomy, Materials Sciences and Computer Science, these aspects are focused on the methodology section. Overall, the study helps us to understand the sentiments of online social exchanges of the scientific community on scientific literature. Specifically, such a fine-grained analysis may help research communities in improving their social media exchanges about the scientific articles to disseminate their scientific findings effectively and to further increase their societal impact. © The Author(s) 2022.

Item Type: Article
Faculty: Executive
Depositing User: Raheel NAWAZ
Date Deposited: 13 Sep 2024 13:12
Last Modified: 13 Sep 2024 13:12
URI: https://eprints.staffs.ac.uk/id/eprint/8451

Actions (login required)

View Item
View Item