scholarly journals Identifying Twitter users who repost unreliable news sources with linguistic information

2020 ◽  
Vol 6 ◽  
pp. e325
Author(s):  
Yida Mu ◽  
Nikolaos Aletras

Social media has become a popular source for online news consumption with millions of users worldwide. However, it has become a primary platform for spreading disinformation with severe societal implications. Automatically identifying social media users that are likely to propagate posts from handles of unreliable news sources sometime in the future is of utmost importance for early detection and prevention of disinformation diffusion in a network, and has yet to be explored. To that end, we present a novel task for predicting whether a user will repost content from Twitter handles of unreliable news sources by leveraging linguistic information from the user’s own posts. We develop a new dataset of approximately 6.2K Twitter users mapped into two categories: (1) those that have reposted content from unreliable news sources; and (2) those that repost content only from reliable sources. For our task, we evaluate a battery of supervised machine learning models as well as state-of-the-art neural models, achieving up to 79.7 macro F1. In addition, our linguistic feature analysis uncovers differences in language use and style between the two user categories.

2019 ◽  
Vol 116 (52) ◽  
pp. 26459-26464 ◽  
Author(s):  
Margaret L. Kern ◽  
Paul X. McCarthy ◽  
Deepanjan Chakrabarty ◽  
Marian-Andrei Rizoiu

Work is thought to be more enjoyable and beneficial to individuals and society when there is congruence between one’s personality and one’s occupation. We provide large-scale evidence that occupations have distinctive psychological profiles, which can successfully be predicted from linguistic information unobtrusively collected through social media. Based on 128,279 Twitter users representing 3,513 occupations, we automatically assess user personalities and visually map the personality profiles of different professions. Similar occupations cluster together, pointing to specific sets of jobs that one might be well suited for. Observations that contradict existing classifications may point to emerging occupations relevant to the 21st century workplace. Findings illustrate how social media can be used to match people to their ideal occupation.


2017 ◽  
Vol 20 (7) ◽  
pp. 2450-2468 ◽  
Author(s):  
Richard Fletcher ◽  
Rasmus Kleis Nielsen

Scholars have questioned the potential for incidental exposure in high-choice media environments. We use online survey data to examine incidental exposure to news on social media (Facebook, YouTube, Twitter) in four countries (Italy, Australia, United Kingdom, United States). Leaving aside those who say they intentionally use social media for news, we compare the number of online news sources used by social media users who do not see it as a news platform, but may come across news while using it (the incidentally exposed), with people who do not use social media at all (non-users). We find that (a) the incidentally exposed users use significantly more online news sources than non-users, (b) the effect of incidental exposure is stronger for younger people and those with low interest in news and (c) stronger for users of YouTube and Twitter than for users of Facebook.


2019 ◽  
Author(s):  
Gregg Murray ◽  
Rebecca Hellen ◽  
James Ralph ◽  
Siona Ni Raghallaigh

BACKGROUND Research impact has traditionally been measured using citation count and impact factor (IF). Academics have long relied heavily on this form of metric system to measure a publication’s impact. A higher number of citations is viewed as an indicator of the importance of the research and a marker for the impact of the publishing journal. Recently, social media and online news sources have become important avenues for dissemination of research, resulting in the emergence of an alternative metric system known as altmetrics. OBJECTIVE We assessed the correlation between altmetric attention score (AAS) and traditional scientific impact markers, namely journal IF and article citation count, for all the dermatology journal and published articles of 2017. METHODS We identified dermatology journals and their associated IFs available in 2017 using InCites Journal Citation Reports. We entered all 64 official dermatology journals into Altmetric Explorer, a Web-based platform that enables users to browse and report on all attention data for every piece of scholarly content for which Altmetric Explorer has found attention. RESULTS For the 64 dermatology journals, there was a moderate positive correlation between journal IF and journal AAS (<i>r<sub>s</sub></i>=.513, <i>P</i>&lt;.001). In 2017, 6323 articles were published in the 64 dermatology journals. Our data show that there was a weak positive correlation between the traditional article citation count and AAS (<i>r<sub>s</sub></i>=.257, <i>P</i>&lt;.001). CONCLUSIONS Our data show a weak correlation between article citation count and AAS. Temporal factors may explain this weak association. Newer articles may receive increased online attention after publication, while it may take longer for scientific citation counts to accumulate. Stories that are at times deemed newsworthy and then disseminated across the media and social media platforms border on sensationalism and may not be truly academic in nature. The opposite can also be true.


2019 ◽  
Vol 23 (1) ◽  
pp. 52-71 ◽  
Author(s):  
Siyoung Chung ◽  
Mark Chong ◽  
Jie Sheng Chua ◽  
Jin Cheon Na

PurposeThe purpose of this paper is to investigate the evolution of online sentiments toward a company (i.e. Chipotle) during a crisis, and the effects of corporate apology on those sentiments.Design/methodology/approachUsing a very large data set of tweets (i.e. over 2.6m) about Company A’s food poisoning case (2015–2016). This case was selected because it is widely known, drew attention from various stakeholders and had many dynamics (e.g. multiple outbreaks, and across different locations). This study employed a supervised machine learning approach. Its sentiment polarity classification and relevance classification consisted of five steps: sampling, labeling, tokenization, augmentation of semantic representation, and the training of supervised classifiers for relevance and sentiment prediction.FindingsThe findings show that: the overall sentiment of tweets specific to the crisis was neutral; promotions and marketing communication may not be effective in converting negative sentiments to positive sentiments; a corporate crisis drew public attention and sparked public discussion on social media; while corporate apologies had a positive effect on sentiments, the effect did not last long, as the apologies did not remove public concerns about food safety; and some Twitter users exerted a significant influence on online sentiments through their popular tweets, which were heavily retweeted among Twitter users.Research limitations/implicationsEven with multiple training sessions and the use of a voting procedure (i.e. when there was a discrepancy in the coding of a tweet), there were some tweets that could not be accurately coded for sentiment. Aspect-based sentiment analysis and deep learning algorithms can be used to address this limitation in future research. This analysis of the impact of Chipotle’s apologies on sentiment did not test for a direct relationship. Future research could use manual coding to include only specific responses to the corporate apology. There was a delay between the time social media users received the news and the time they responded to it. Time delay poses a challenge to the sentiment analysis of Twitter data, as it is difficult to interpret which peak corresponds with which incident/s. This study focused solely on Twitter, which is just one of several social media sites that had content about the crisis.Practical implicationsFirst, companies should use social media as official corporate news channels and frequently update them with any developments about the crisis, and use them proactively. Second, companies in crisis should refrain from marketing efforts. Instead, they should focus on resolving the issue at hand and not attempt to regain a favorable relationship with stakeholders right away. Third, companies can leverage video, images and humor, as well as individuals with large online social networks to increase the reach and diffusion of their messages.Originality/valueThis study is among the first to empirically investigate the dynamics of corporate reputation as it evolves during a crisis as well as the effects of corporate apology on online sentiments. It is also one of the few studies that employs sentiment analysis using a supervised machine learning method in the area of corporate reputation and communication management. In addition, it offers valuable insights to both researchers and practitioners who wish to utilize big data to understand the online perceptions and behaviors of stakeholders during a corporate crisis.


Author(s):  
Dipti Chaudhari ◽  
Krina Rana ◽  
Radhika Tannu ◽  
Snehal Yadav

Most of the smart phone users prefer to read the news via social media over internet. The news websites are publishing the news and provide the source of authentication. The question is how to authenticate the news and the articles which are circulated among the social media like WhatsApp groups, Facebook Pages, Twitter and other micro blogs and social networking sites. It can be considered that social media has replaced the traditional media and become one of the main platforms for spreading news. News on social media trends to travel faster and easier than traditional news sources due to the internet accessibility and convenience. It is harmful for the society to believe on the rumors and pretend to be a news. The basic need of an hour is to stop the rumors especially in the developing countries like India, and focus on the correct, authenticated news articles. This paper demonstrates a model and methodology for fake news detection. With the help of Machine Learning, we tried to aggregate the news and later determine whether the news is real or fake using Support Vector Machine. Even we have presented the mechanism to identify the significant Tweet's attribute and application architecture to systematically automate the classification of the online news.


2022 ◽  
pp. 251484862110698
Author(s):  
Scott Burnett

This article examines the potential for online activism to contest hegemonic neoliberal conservation models in South Africa, using the Covid-19 crisis as a window onto discursive struggle. National lockdown measures during the pandemic sent the vital tourism sector of an already fragile economy into deep crisis. Neoliberal and militarized conservation models, with their reliance on international travel, are examined as affected by a conjunctural crisis, the meaning of which was contested by a broad range of social actors in traditional and on social media. In 30 online news videos, racial hierarchies of land ownership and conservation labour geographies are reproduced and legitimated, as is a visual vocabulary of conservation as equivalent with guns, boots, and anti-poaching patrols. Here, hope is represented as residing in the increased privatization of public goods, and the extraction of value from these goods in the form of elite, luxury consumption. In a corpus of posts on Twitter corpus, on the other hand, significant counter-hegemonic resistance to established neoliberal conservation models is in evidence. In their replies to white celebrity conservationist Kevin Pietersen, critical South African Twitter users offer a contrasting vision of hope grounded in anti-racist equality, a rejection of any special human-animal relations enjoyed by Europeans, and an articulation of a future with land justice at its centre. The analysis supports the idea that in the “interregnum” between hegemonic social orders, pathways towards transformed futures may be glimpsed as “kernels of truth” in discursive struggles on social media.


Tripodos ◽  
2021 ◽  
Vol 1 (47) ◽  
pp. 49-66
Author(s):  
Rachel E. Khan

From a century to a decade ago, the news media played a crucial role in providing the public with valuable in­formation, especially during a crisis. However, the advent of social media has brought about a change in ac­cess and distribution of the news and this may have resulted in less effec­tive health communication during this global coronavirus pandemic. These days, social media can have a great­er public reach and therefore, be the best tool to disseminate information. At the same time, there is the ques­tion of whether the important or trivial information is being shared. The aim of this paper is to explore the role of social media in providing the public with important information during the height of the coronavirus pandemic. Using Great Britain as a case study, the research analysed the kind of content on the coronavirus that had gone vi­ral in online news sources in the Unit­ed Kingdom to determine whether the information that was being shared contributed or not to effective health communication. Keywords: news, viral news, online media, journalism, crisis communica­tion, coronavirus.


Author(s):  
Gregory P. Magarian

This chapter surveys the distinctive free speech problems raised by the Internet and social media, discussing the most pressing, prominent issues around Internet speech regulation, with attention to variations across legal systems. It begins by briefly describing the Internet’s communicative architecture. The chapter then looks at structural concerns that have limited online free speech or prompted regulatory attention in the Internet Age. These include inequalities of access; power relationships among governments, private speech intermediaries, and Internet users; and the ways the Internet’s architecture complicates effective regulation. Finally, the chapter considers key substantive issues for online communication, including hate speech, privacy, intellectual property, and the credibility and influence of online news sources.


2019 ◽  
Vol 5 (3) ◽  
pp. 205630511986546 ◽  
Author(s):  
Xiaoyi Yuan ◽  
Ross J. Schuchard ◽  
Andrew T. Crooks

Many states in the United States allow a “belief exemption” for measles, mumps, and rubella (MMR) vaccines. People’s opinion on whether or not to take the vaccine can have direct consequences in public health. Social media has been one of the dominant communication channels for people to express their opinions of vaccination. Despite governmental organizations’ efforts of disseminating information of vaccination benefits, anti-vaccine sentiment is still gaining momentum. Studies have shown that bots on social media (i.e., social bots) can influence opinion trends by posting a substantial number of automated messages. The research presented here investigates the communication patterns of anti- and pro-vaccine users and the role of bots in Twitter by studying a retweet network related to MMR vaccine after the 2015 California Disneyland measles outbreak. We first classified the users into anti-vaccination, neutral to vaccination, and pro-vaccination groups using supervised machine learning. We discovered that pro- and anti-vaccine users retweet predominantly from their own opinion group. In addition, our bot analysis discovers that 1.45% of the corpus users were identified as likely bots which produced 4.59% of all tweets within our dataset. We further found that bots display hyper-social tendencies by initiating retweets at higher frequencies with users within the same opinion group. The article concludes that highly clustered anti-vaccine Twitter users make it difficult for health organizations to penetrate and counter opinionated information while social bots may be deepening this trend. We believe that these findings can be useful in developing strategies for health communication of vaccination.


2020 ◽  
Vol 6 (1) ◽  
pp. 205630511989732 ◽  
Author(s):  
Elmie Nekmat

This study extends the nudge principle with media effects and credibility evaluation perspectives to examine whether the effectiveness of fact-check alerts to deter news sharing on social media is moderated by news source and whether this moderation is conditional upon users’ skepticism of mainstream media. Results from a 2 (nudge: fact-check alert vs. no alert) × 2 (news source: legacy mainstream vs. unfamiliar non-mainstream) ( N = 929) experiment controlling for individual issue involvement, online news involvement, and news sharing experience revealed significant main and interaction effects from both factors. News sharing likelihood was overall lower for non-mainstream news than mainstream news, but showed a greater decrease for mainstream news when nudged. No conditional moderation from media skepticism was found; instead, users’ skepticism of mainstream media amplified the nudge effect only for news from legacy mainstream media and not unfamiliar non-mainstream source. Theoretical and practical implications on the use of fact-checking and mainstream news sources in social media are discussed.


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