Abstract
The traditional retraction mechanism's failure to eradicate the retracted papers' continued effects urges for more control and monitoring systems to warn against low-quality and flawed papers. To investigate the potential of Twitter in reflecting social attitudes about retracted papers, this study analyzed the sentiments expressed in the tweets about the papers and contrasted them against two benchmarks: the retraction notes and their tweets respectively serving as authorities’ voices and their social resonance. Using a sentiment analysis method, the study examined a collection of Scopus-indexed retracted papers, their retraction notices, and their tweets. The opinions expressed in the texts were mined using the SentiStrength. The findings revealed a high rate of untweetedness for the retracted papers (91.54%) and retraction notes (90.72%). However, the paper tweets mostly contained texts and were not limited to URLs, except for a low percentage (2.78%). While the retraction notices were mostly negative, followed by neutral polarity, the note and paper tweets were dominated by neutrality followed by negativity. Nevertheless, the paper tweets were more negative either in the pre-, or post-retraction phases. Moreover, negative tweets were comparatively more retweeted than positive and neutral polarities. The research findings implied tweet potentials in increasing the visibility of and awareness about low-quality and erroneous papers, even before being disclosed by official authorities, provided that more users are actively involved in the discussions on the platform. The potential can be regarded as a kind of monitoring applied by social users who feel responsible and show sensitivity towards the quality of science, though they may be scarce in number and selectively react to some papers.
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Appendices
Appendix 1: Frequencies of opinion polarities for (re)tweets not containing mentions and # tags
Row | Entities | Frequency | Chi2 test | |||||
---|---|---|---|---|---|---|---|---|
Polarity | Total | χ | Asymp. Sig | |||||
Negative | Neutral | Positive | ||||||
1 | Note tweets | 149 | 313 | 85 | 547 | 151.69 | 0.00 | |
27.24% | 57.22% | 15.54% | 100% | |||||
2 | Paper tweets | Pre-retraction | 1536 | 2066 | 743 | 4345 | 612.22 | 0.00 |
35.35% | 47.55% | 17.10% | 100% | |||||
3 | Post retraction | 117 | 210 | 61 | 388 | 87.59 | 0.00 | |
30.15% | 54.12% | 15.72% | 100% | |||||
4 | Total | 1653 | 2276 | 804 | 4733 | 692.10 | 0.00 | |
34.92% | 48.09% | 16.99% | 100% | |||||
5 | Note retweet | 262 | 512 | 265 | 1039 | 118.88 | 0.00 | |
25.22% | 49.28% | 25.51% | 100% | |||||
6 | Paper retweet | 3038 | 2006 | 1428 | 6472 | 616.69 | 0.00 | |
46.94% | 31% | 22.06% | 100% |
Appendix 2: Examples of positive note and paper tweets
Theme | Note Tweet | Paper Tweet |
---|---|---|
Mentioning positive titles or reporting positive results of the paper (retracted or retracted-would-be) | high heels increase women's attractiveness | Our study…suggests that female protégés who remain in academia reap more benefits when mentored by males rather than equally-impactful females |
… the study claiming high heels make women look more attractive was bogus. Looks like the authors manipulated data to get the sexy result. … | … Breathing is one of the most important physiological functions to sustain life and health | |
Retraction of … that concluded having a female mentor is detrimental for young researchers' scientific success | A 'scientific' research paper 'found' female mentors don't lead to academic success! Now the paper stands retracted … | |
Expressing excitement about, suggesting, or praising the act of retracting/ appreciating other tweeters for their points/ challenging peer review or publishing | The paper should never have been accepted in the first place, but glad to see it retracted | The retractation of this paper is an excellent news for those who truely devote time to true mentoring |
Respect to … and other authors for this brave and admirable decision … | You know THAT paper… Ignore it. Better yet, retract it. Here are much better papers on the topic with more solid conceptualization and better supported interpretation. No, women do not need male mentors to be successful. Yes, women mentors support success of women scientists | |
Brave and decent decision by … and colleagues to retract a paper after reanalysis | Glad to see that … has retracted this article! | |
It was retracted. So yeah. It is nonsense. Amazing that your common sense missed that | This paper should be retracted—both due to its flawed methodology and damaging conclusions. My PhD supervisor is a woman and both a stellar scientist as well as an excellent mentor. My achievements are as much down to her as anyone else | |
Whilst I am delighted this article has been retracted, one must wonder how it was allowed to be published in the first place | This paper should be retracted. Shall I wear my suit and/or scrubs when I go to the beach? Shall I not go out to enjoy myself and relax as this will look unprofessional? This paper should never have been published | |
… Glad the debate on how to achieve true equity in science is thriving | The journal must retract the paper and apologize to the scientific community. I am very proud that my research is led by a woman. I can't believe that a journal with this standard would publish such an article | |
Quoting, challenging, or referring to the retraction reasons | … the authors were caught up in the excitement of the moment … | 1. Retract the paper. 2. Publish measures you'll take to ensure this kind of stuff doesn't happen again, preferably through a commitment towards systemic change |
Some examples … where the retractions correct genuine, inadvertent mistakes, point to reanalysis & should be praised | Although the paper has been retracted. I question … why did this paper make it to publication in the first place? How can we trust the validity of a journal if articles with clear bias are being assigned a DOI … | |
Failure in applying negational words in SentiStrength, when decomposing compound terms | not-so-much-exciting response parsed and scored as not[0] so[0] much[0] exciting[2] response[0] | |
Providing positive evidence to challenge or refute the results of the retracted or retracted-would-be paper or mocking them | The … group students absolutely love having a female mentor who is always encouraging inclusivity, diversity and equity and whose strong personality, kindness and brilliant mind serve as an inspiration to all of us | |
What! | ||
Raise your hand if you are a female scientist who had a female mentor who was pivotal to you[r] success. This paper is way off base | ||
| ||
LOVE that feeling when a paper about mentorship, success and gender misunderstands the nature of mentorship…and success…and gender | ||
My ♀ mentors' support, encouragement & examples as role models are why I am still here, standing strong, & love being an academic … | ||
A broader review of existing scientific evidence clearly shows that approved masks with correct certification, and worn in compliance with guidelines, are an effective prevention of COVID-19 transmission | ||
He asked that the vaccine be encouraged. Masking has been extremely helpful as well … | ||
What a joke of a paper! | ||
Confirming the results of or supporting the publication of the retracted or retracted-would-be paper | Wow a real study with references | |
The paper is WOW | ||
Just take … [the facemasks] off. breathe freely. eat well, sleep well, exercise. laugh, hug, love |
Appendix 3: Examples of negative and neutral tweets
No. | Theme | Tweet | Polarity |
---|---|---|---|
1 | Challenging peer reviewing/publishing | They're very aware and concerned and yet they published it anyway, after 4(!!) negative peer-reviews and many, many researchers saying that it should be retracted "¦Seriously"¦ in my country we have … a saying…u better think about what you're doing, instead of having to apologize | Neutral |
2 | Challenging the retraction | Why was this article retracted? What pressure was put on this author? | Negative |
3 | … Feminists lost their shit over this and forced the female author and journal to retract the paper and apologise | Negative | |
4 | … Why is NIH having Med Hypotheses retracted that agree with Fauci and in fact cite Fauci? | Neutral | |
5 | I wonder why this got retracted? | Neutral | |
6 | This paper has now been retracted, no comment on why, but it cites many studies relating to harms from masks. Conclusion section has a good summary. Not something that can just be ignored. Reports on nasty materials in certain masks also now widespread | Negative | |
7 | Why is NIH having medical articles retracted that don't suit their agenda? | Neutral | |
8 | Why retracted?? | Neutral | |
9 | Why was the … mask study retracted? | Neutral | |
10 | Why was the … mask study retracted? Where is the "study" /proof showing it's not true? | Neutral | |
11 | Suggesting retraction and demanding improvement of peer reviewing | The paper should be retracted. But that is nowhere near enough. Journals need to be tracking gender and other group statuses, and ensuring that acceptance rates are equitable. And they need to report those results transparently and on an ongoing basis | Neutral |
12 | Challenging the retraction and peer reviewing/publishing | Question is why editors published it in first place. And maybe first to be retracted under social media pressure | Negative |
13 | Encouraging pressures for retraction | It looks like outraged voices of this appalling … on male vs female mentor paper have been heard. Let's keep the pressure on the journal to retract the paper by commenting on their post and tweeting up a storm! | Negative |
14 | Responding to the tweets challenging the retraction | 99% of those saying the article should not be retracted because "scientific debate"… are white men. Just saying… | Neutral |
15 | Wonder why this source that he mentioned has been retracted. The sheep will still follow their masters to the slaughter and ignore this type of data | Negative | |
16 | Suggesting retraction | "… strongly believes in & supports equality and diversity in research"—What a contradiction with the fact that … published this paper. Want to support equality and diversity? Retract the paper | Neutral |
17 | … I still don't understand why this paper is not retracted yet?? | Neutral | |
18 | Agree this sexist paper should be retracted based on its flawed analysis and unsupported conclusions | Negative | |
19 | An immediate retraction and apology is needed. This is detrimental to the huge efforts to increase the number of women at research institutions. Plus, it is scientifically flawed. Must be explained why this paper was even accepted for publication | Negative | |
20 | Fast retraction and an apology with reasons why it was published in the first place are expected | Neutral | |
21 | Here is the link to this unprofessional study If you are a true #heforshe then you must speak up against this study This should be retracted immediately | Negative | |
22 | Morally and ethically this article should be RETRACTED!!! | Neutral | |
23 | Please, … retract it asap!!!!! And explain to us why???? Why this article was accepted??? A lot of good science rejected and this bullshit published in …! Unbelievable! Disgusting!!! | Negative | |
24 | Question is why editors published it in first place. And maybe first to be retracted under social media pressure | Negative | |
25 | That's unbelievable … retract the paper! | Negative | |
26 | … Time to retract the paper & regain our trust | Neutral | |
27 | This study should be retracted with an apology | Neutral | |
28 | You must retract the paper if you want this not to damage your reputation. Show women in STEM that this was a mistake and you do not support this kind of behavior! | Neutral | |
30 | What an amazing pile of crap. This should be retracted | Neutral | |
31 | Suggesting retraction and challenging peer review/publishing | … 1. 3 doctors thought this was okay (it was not it was stalking) 2. An IRB approved this! 3. A Medical Journal published it. This article should be retracted and an apology given … | Neutral |
32 | Retract the paper…The published peer reviews brought up all of these issues and nothing was done to address them | Neutral | |
33 | The fact this went through peer review, in addition to an editor signing off on the manuscript is shocking. It sends the wrong message to trainees. The right thing to do … is to retract the paper | Negative |
Appendix 4: The partial correlation between tweet-note similarity and tweet opinion strength
Level | Variables | Levenshtein similarity for | ||||||
---|---|---|---|---|---|---|---|---|
Tweets and notes | Tweets and paper abstracts | Tweets and paper titles | Notes and paper titles | Notes and paper abstracts | ||||
Zero | Tweet Opinion strength | r | − 0.206 | − 0.096 | − 0.170 | 0.027 | 0.004 | |
Sig | 0.000 | 0.040 | 0.000 | 0.565 | 0.928 | |||
Levenshtein similarity for | Tweets and notes | r | 0.384 | 0.474 | 0.039 | − 0.418 | ||
Sig | 0.000 | 0.000 | 0.410 | 0.000 | ||||
Tweets and paper abstracts | r | 0.330 | 0.176 | 0.151 | ||||
Sig | 0.000 | 0.000 | 0.001 | |||||
Tweets and paper titles | r | 0.023 | − 0.101 | |||||
Sig | 0.619 | 0.031 | ||||||
Notes and paper titles | r | 0.435 | ||||||
Sig | 0.000 | |||||||
Control | Tweet Opinion strength | r | − 0.180 | 0.028 | − 0.071 | |||
Sig | 0.000 | 0.548 | 0.132 |
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Amiri, M., Yaghtin, M. & Sotudeh, H. How do tweeters feel about scientific misinformation: an infoveillance sentiment analysis of tweets on retraction notices and retracted papers. Scientometrics 129, 261–287 (2024). https://doi.org/10.1007/s11192-023-04871-7
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DOI: https://doi.org/10.1007/s11192-023-04871-7