| Literature DB >> 26244779 |
Stefanie Ringelhan1, Jutta Wollersheim1, Isabell M Welpe2.
Abstract
Due to the increasing amount of scientific work and the typical delays in publication, promptly assessing the impact of scholarly work is a huge challenge. To meet this challenge, one solution may be to create and discover innovative indicators. The goal of this paper is to investigate whether Facebook likes for unpublished manuscripts that are uploaded to the Internet could be used as an early indicator of the future impact of the scientific work. To address our research question, we compared Facebook likes for manuscripts uploaded to the Harvard Business School website (Study 1) and the bioRxiv website (Study 2) with traditional impact indicators (journal article citations, Impact Factor, Immediacy Index) for those manuscripts that have been published as a journal article. Although based on our full sample of Study 1 (N = 170), Facebook likes do not predict traditional impact indicators, for manuscripts with one or more Facebook likes (n = 95), our results indicate that the more Facebook likes a manuscript receives, the more journal article citations the manuscript receives. In additional analyses (for which we categorized the manuscripts as psychological and non-psychological manuscripts), we found that the significant prediction of citations stems from the psychological and not the non-psychological manuscripts. In Study 2, we observed that Facebook likes (N = 270) and non-zero Facebook likes (n = 84) do not predict traditional impact indicators. Taken together, our findings indicate an interdisciplinary difference in the predictive value of Facebook likes, according to which Facebook likes only predict citations in the psychological area but not in the non-psychological area of business or in the field of life sciences. Our paper contributes to understanding the possibilities and limits of the use of social media indicators as potential early indicators of the impact of scientific work.Entities:
Mesh:
Year: 2015 PMID: 26244779 PMCID: PMC4526566 DOI: 10.1371/journal.pone.0134389
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Comparison of Facebook likes of a manuscript, journal article citations, and the Impact Factor/Immediacy Index as potential impact indicators of scientific work.
| Facebook likes | Citations | Impact Factor/Immediacy Index | |
|---|---|---|---|
| Advantage | • Possibly alternative, more modern and faster index of the influence of an unpublished manuscript | • Citations are carefully selected posts after information of an article has been used | • Indicates the popularity of a journal in the scientific community in an easy to understand fashion |
| • Possibly more direct feedback for authors (the rate and magnitude of the manuscript impact) | • Citations are strongly accepted and heavily consulted as an indicator of the impact of the quality and relevance of a journal article | • Impact Factor is a worldwide accepted standard indicator, e.g., for the comparison of journals and hiring decisions | |
| • May facilitate the search for red-hot manuscripts within the drastically increasing amount of scientific work | |||
| • Clearly renders a positive opinion of a manuscript in an open review form | |||
| • May include recommendations from stakeholders in science who read but may not cite the manuscript | |||
| • Manuscripts that might not be published in journals are also considered | |||
| • May reduce self-interested referencing habits (cannot be determined who liked a manuscript) | |||
| • Are independent from limited databases | |||
| Disadvantage | • Unclear informative value (e.g., large number of likes may reflect social influence, catchy title) | • Unclear informative value (i.e., negative and positive citations cannot be distinguished) | • Invalid statements about single articles based on the skewed distribution of citations (and the number of published articles) in a journal in a given timespan |
| • Can be manipulated (inflated) | • May be given for reasons other than appropriateness, e.g., to elevate citations of own articles | • Retrospective measure that is annually updated and does not necessarily reflect current publications | |
| • Might be given in a more spontaneous and less thoughtful way | • Are distorted: Limited databases that cover selected journals/timeframes/mostly work in English | ||
| • Is not an established indicator in science | • Long time lags until the influence of an article becomes apparent: publication delay, citation gap | ||
| • Likes are not centrally available and traceable for all manuscripts | • Display formal recognition of scholarly impact and do not necessarily depict to what extent the article was read or is use to non-scientists |
The Impact Factor and the Immediacy Index are discussed together in one column in this table because both rely on similar calculations and thus are associated with similar advantages and disadvantages.
Descriptive statistics and correlations for Study 1.
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| (2) | (3) | (4) | (5) | (6) | |
|---|---|---|---|---|---|---|---|---|---|
| (1) Facebook likes | 0 | 237 | 4.46 | 18.94 | 1.00 | .12 | .07 | -.10 | -.03 |
| (2) Non-zero Facebook likes | 1 | 237 | 7.98 | 24.83 | .10 | .13 | -.11 | -.05 | |
| (3) Upload date | 2003 | 2010 | 2007.56 | 1.40 | -.46 | -.06 | .07 | ||
| (4) Citations | 0 | 84 | 13.82 | 17.66 | .19 | .06 | |||
| (5) Impact Factor | 0.23 | 6.70 | 2.29 | 1.27 | .67 | ||||
| (6) Immediacy Index | 0.04 | 2.03 | 0.49 | 0.41 |
N = 170 (n = 95 for non-zero Facebook likes); Min = Minimum; Max = Maximum; M = Mean; SD = Standard Deviation.
Pearson’s correlations are displayed.
* p < .05;
** p < .01;
*** p < .001 (two-tailed).
Fig 1Relationship between Facebook likes of HBS manuscripts and citations, the Impact Factor and the Immediacy Index.
β = Beta coefficient for the regression of the control variable upload date on the criterion citations; β = Beta coefficient for the regression of the control variable upload date on the criterion Impact Factor; β = Beta coefficient for the regression of the control variable upload date on the criterion Immediacy Index.
Fig 2Relationship between non-zero Facebook likes for HBS manuscripts and citations, the Impact Factor and the Immediacy Index.
β = Beta coefficient for the regression of the control variable upload date on the criterion citations; β = Beta coefficient for the regression of the control variable upload date on the criterion Impact Factor; β = Beta coefficient for the regression of the control variable upload date on the criterion Immediacy Index.
Descriptive statistics and correlations for Study 2.
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| (2) | (3) | (4) | (5) | (6) | |
|---|---|---|---|---|---|---|---|---|---|
| (1) Facebook likes | 0 | 64 | 2.4 | 7.28 | 1.00 | .05 | .06 | .08 | .04 |
| (2) Non-zero Facebook likes | 1 | 64 | 7.73 | 11.41 | .10 | .01 | .00 | -.04 | |
| (3) Upload date | 2013 | 2014 | 2013.89 | 0.32 | -.06 | -.03 | .00 | ||
| (4) Citations | 0 | 24 | 1.61 | 3.02 | .36 | .34 | |||
| (5) Impact Factor | 0.78 | 42.35 | 7.52 | 6.76 | .95 | ||||
| (6) Immediacy Index | 0.04 | 12.04 | 1.51 | 1.52 |
N = 270 (n = 84 for non-zero Facebook likes); Min = Minimum; Max = Maximum; M = Mean; SD = Standard Deviation.
Pearson’s correlations are displayed.
* p < .05;
** p < .01;
*** p < .001 (two-tailed).
Fig 3Relationship between Facebook likes of bioRxiv manuscripts and citations, the Impact Factor and the Immediacy Index.
β = Beta coefficient for the regression of the control variable upload date on the criterion citations; β = Beta coefficient for the regression of the control variable upload date on the criterion Impact Factor; β = Beta coefficient for the regression of the control variable upload date on the criterion Immediacy Index.
Fig 4Relationship between non-zero Facebook likes of bioRxiv manuscripts and citations, the Impact Factor and the Immediacy Index.
β = Beta coefficient for the regression of the control variable upload date on the criterion citations; β = Beta coefficient for the regression of the control variable upload date on the criterion Impact Factor; β = Beta coefficient for the regression of the control variable upload date on the criterion Immediacy Index.