Could early tweet counts predict later citation counts? A gender study in Life Sciences and Biomedicine (2014–2016)
Artikel i vetenskaplig tidskrift, 2020

In this study, it was investigated whether early tweets counts could differentially benefit female and male (first, last) authors in terms of the later citation counts received. The data for this study comprised 47,961 articles in the research area of Life Sciences & Biomedicine from 2014–2016, retrieved from Web of Science’s Medline. For each article, the number of received citations per year was downloaded from WOS, while the number of received tweets per year was obtained from PlumX. Using the hurdle regression model, I compared the number of received citations by female and male (first, last) authored papers and then I investigated whether early tweet counts could predict the later citation counts received by female and male (first, last) authored papers. In the regression models, I controlled for several important factors that were investigated in previous research in relation to citation counts, gender or Altmetrics. These included journal impact (SNIP), number of authors, open access, research funding, topic of an article, international collaboration, lay summary, F1000 Score and mega journal. The findings showed that the percentage of papers with male authors in first or last authorship positions was higher than that for female authors. However, female first and last-authored papers had a small but significant citation advantage of 4.7% and 5.5% compared to male-authored papers. The findings also showed that irrespective of whether the factors were included in regression models or not, early tweet counts had a weak positive and significant association with the later citations counts (3.3%) and the probability of a paper being cited (21.1%). Regarding gender, the findings showed that when all variables were controlled, female (first, last) authored papers had a small citation advantage of 3.7% and 4.2% in comparison to the male authored papers for the same number of tweets.

citation analysis

Tweets

Gender

biomedicine and life sciences

Författare

Tahereh Dehdarirad

Chalmers, Vetenskapens kommunikation och lärande, Forskarstöd, bibliometri och rankning

PLoS ONE

1932-6203 (ISSN) 19326203 (eISSN)

Vol. 15 11 e0241723

Ämneskategorier

Biblioteks- och informationsvetenskap

Medie- och kommunikationsvetenskap

Hälsovetenskaper

DOI

10.1371/journal.pone.0241723

PubMed

33137147

Relaterade dataset

Could early tweet counts predict later citation counts? A gender study in Life Sciences and Biomedicine (2014-2016) [dataset]

DOI: 10.7910/dvn/ghmv8q

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Senast uppdaterat

2023-09-22