US political battle over social media will grow

Significance The boycott is the most coordinated yet against Facebook over hate speech and misinformation on its platforms. Facebook and Twitter have become lightning rods for challenges to social media platforms and their Section 230 exemption from liability for content they carry. Impacts Revision of Section 230 protections is likely, although not without legal challenge. Social media’s pervasiveness and profitability make structural reform or extensive regulation unlikely. Many small direct-to-consumer businesses built on Facebook will have to stay loyal, risking consumer backlash. Influencer advertising will come under stricter scrutiny from brands and regulators. US regulation of social media will not diminish Washington’s opposition to international digital taxes on US tech companies.

2019 ◽  
Vol 53 (4) ◽  
pp. 501-527
Author(s):  
Collins Udanor ◽  
Chinatu C. Anyanwu

Purpose Hate speech in recent times has become a troubling development. It has different meanings to different people in different cultures. The anonymity and ubiquity of the social media provides a breeding ground for hate speech and makes combating it seems like a lost battle. However, what may constitute a hate speech in a cultural or religious neutral society may not be perceived as such in a polarized multi-cultural and multi-religious society like Nigeria. Defining hate speech, therefore, may be contextual. Hate speech in Nigeria may be perceived along ethnic, religious and political boundaries. The purpose of this paper is to check for the presence of hate speech in social media platforms like Twitter, and to what degree is hate speech permissible, if available? It also intends to find out what monitoring mechanisms the social media platforms like Facebook and Twitter have put in place to combat hate speech. Lexalytics is a term coined by the authors from the words lexical analytics for the purpose of opinion mining unstructured texts like tweets. Design/methodology/approach This research developed a Python software called polarized opinions sentiment analyzer (POSA), adopting an ego social network analytics technique in which an individual’s behavior is mined and described. POSA uses a customized Python N-Gram dictionary of local context-based terms that may be considered as hate terms. It then applied the Twitter API to stream tweets from popular and trending Nigerian Twitter handles in politics, ethnicity, religion, social activism, racism, etc., and filtered the tweets against the custom dictionary using unsupervised classification of the texts as either positive or negative sentiments. The outcome is visualized using tables, pie charts and word clouds. A similar implementation was also carried out using R-Studio codes and both results are compared and a t-test was applied to determine if there was a significant difference in the results. The research methodology can be classified as both qualitative and quantitative. Qualitative in terms of data classification, and quantitative in terms of being able to identify the results as either negative or positive from the computation of text to vector. Findings The findings from two sets of experiments on POSA and R are as follows: in the first experiment, the POSA software found that the Twitter handles analyzed contained between 33 and 55 percent hate contents, while the R results show hate contents ranging from 38 to 62 percent. Performing a t-test on both positive and negative scores for both POSA and R-studio, results reveal p-values of 0.389 and 0.289, respectively, on an α value of 0.05, implying that there is no significant difference in the results from POSA and R. During the second experiment performed on 11 local handles with 1,207 tweets, the authors deduce as follows: that the percentage of hate contents classified by POSA is 40 percent, while the percentage of hate contents classified by R is 51 percent. That the accuracy of hate speech classification predicted by POSA is 87 percent, while free speech is 86 percent. And the accuracy of hate speech classification predicted by R is 65 percent, while free speech is 74 percent. This study reveals that neither Twitter nor Facebook has an automated monitoring system for hate speech, and no benchmark is set to decide the level of hate contents allowed in a text. The monitoring is rather done by humans whose assessment is usually subjective and sometimes inconsistent. Research limitations/implications This study establishes the fact that hate speech is on the increase on social media. It also shows that hate mongers can actually be pinned down, with the contents of their messages. The POSA system can be used as a plug-in by Twitter to detect and stop hate speech on its platform. The study was limited to public Twitter handles only. N-grams are effective features for word-sense disambiguation, but when using N-grams, the feature vector could take on enormous proportions and in turn increasing sparsity of the feature vectors. Practical implications The findings of this study show that if urgent measures are not taken to combat hate speech there could be dare consequences, especially in highly polarized societies that are always heated up along religious and ethnic sentiments. On daily basis tempers are flaring in the social media over comments made by participants. This study has also demonstrated that it is possible to implement a technology that can track and terminate hate speech in a micro-blog like Twitter. This can also be extended to other social media platforms. Social implications This study will help to promote a more positive society, ensuring the social media is positively utilized to the benefit of mankind. Originality/value The findings can be used by social media companies to monitor user behaviors, and pin hate crimes to specific persons. Governments and law enforcement bodies can also use the POSA application to track down hate peddlers.


Subject Advertising on social media. Significance There is growing alignment between regulatory pressure on social media companies to suppress fake accounts and the firms' commercial interest in attracting advertisers. Advertisers, who provide the bulk of social media platforms’ revenue, are beginning to question whether they are getting value for money when their advertising budget is spent on fake clicks. Impacts Action against fake activity on social media will cause a short-term dip in the firms’ share price. Demand will rise for 'influencers' who can show their following consists of genuine users. Some advertisers will distance themselves from social media due to the latter’s failures on tackling hate speech and polarisation.


Electronics ◽  
2021 ◽  
Vol 10 (11) ◽  
pp. 1332
Author(s):  
Hong Fan ◽  
Wu Du ◽  
Abdelghani Dahou ◽  
Ahmed A. Ewees ◽  
Dalia Yousri ◽  
...  

Social media has become an essential facet of modern society, wherein people share their opinions on a wide variety of topics. Social media is quickly becoming indispensable for a majority of people, and many cases of social media addiction have been documented. Social media platforms such as Twitter have demonstrated over the years the value they provide, such as connecting people from all over the world with different backgrounds. However, they have also shown harmful side effects that can have serious consequences. One such harmful side effect of social media is the immense toxicity that can be found in various discussions. The word toxic has become synonymous with online hate speech, internet trolling, and sometimes outrage culture. In this study, we build an efficient model to detect and classify toxicity in social media from user-generated content using the Bidirectional Encoder Representations from Transformers (BERT). The BERT pre-trained model and three of its variants has been fine-tuned on a well-known labeled toxic comment dataset, Kaggle public dataset (Toxic Comment Classification Challenge). Moreover, we test the proposed models with two datasets collected from Twitter from two different periods to detect toxicity in user-generated content (tweets) using hashtages belonging to the UK Brexit. The results showed that the proposed model can efficiently classify and analyze toxic tweets.


2021 ◽  
Vol ahead-of-print (ahead-of-print) ◽  
Author(s):  
Kulvinder Kaur ◽  
Pawan Kumar

PurposeThe rise in the use of Internet technologies and social media has shifted the marketing practices from offline to online. This study aims to determine the pros and cons of social media marketing in the beauty and wellness industry.Design/methodology/approachIn-depth interviews were conducted with the owners and marketing executives of beauty and wellness centers to understand the use of popular social media platforms in this industry and their pros and cons.FindingsThe researchers identified eight merits and seven demerits of social media in the beauty and wellness industry. Every respondent is happy and satisfied with social media use, particularly Instagram and Facebook. Irrespective of the demerits, they have shown the intention to increase its usage in the future. The merits override demerits; thus, social media is a blessing for this industry from the owners' perspective.Research limitations/implicationsThe research is exploratory and is confined to just one industry. Research implication is that the visual nature of social media makes it a powerful tool for the promotion of the beauty and wellness industry.Practical implicationsThe study's findings will be beneficial for small-scale businesses as it will push them to take advantage of this low-cost marketing tool.Social implicationsSocial media marketing is helpful for communication and marketing purposes for society.Originality/valueThe beauty and wellness industry remained unfocused by researchers because it is highly unorganized, fragmented and not regulated, yet has huge growth potential. This research will provide a closer look at this industry as well as social media marketing.


2021 ◽  
Vol ahead-of-print (ahead-of-print) ◽  
Author(s):  
Liang Ma ◽  
Xin Zhang ◽  
Gaoshan Wang ◽  
Ge Zhang

PurposeThe purpose of the present study is to build a research model to study how the use of different enterprise social media platforms affects employees' relationship capital, and the moderating role of innovation culture is also examined.Design/methodology/approachStructural equation modeling was performed to test the research model and hypotheses. Surveys were conducted in an electronic commerce company in China that uses different social media platforms, generating 301 valid responses for analysis.FindingsFirst, private social media used for work-related purposes can contribute to employees' relationship capital, and public social media QQ used for work-related purposes can contribute to employees' communication quality. WeChat used for social-related purposes has a positive effect on employees' information exchange. Second, innovation culture acts as a positive moderator between work-related media use and employees' information exchange, while innovation culture acts as a negative moderator between social-related WeChat use and employees' information exchange. Third, innovation culture acts as a positive moderator between work-related QQ use and employees' trust, while innovation culture acts as a negative moderator between social-related QQ use and employees' trust.Originality/valueFirst, this paper contributes to the information system (IS) social media literature by studying the effect of the use of different enterprise social media platforms used for different purposes on employees' relationship capital. Second, the authors contribute to relationship capital theory by clarifying that use of public and private social media platforms for social- and work-related purposes is an important driver of the formation of employees' relational capital. Third, the present study also contributes to enterprise social media literature by confirming that innovation culture acts as a different moderator between use of different enterprise social media platforms and employees' relationship capital.


2021 ◽  
Vol ahead-of-print (ahead-of-print) ◽  
Author(s):  
Shaoyu Ye ◽  
Kevin K.W. Ho ◽  
Andre Zerbe

Purpose This study aims to clarify the effects of different patterns of Facebook, Twitter and Instagram usage on user loneliness and well-being in Japan. Design/methodology/approach Based on responses to a self-report questionnaire in Japan, 155 university students were separated into 4 groups: users of Twitter only, users of Twitter and Facebook, users of Twitter and Instagram and users of all three social media. The effects of social media usage on loneliness and well-being for each group were analysed. Findings No social media usage effects on loneliness or well-being were detected for those who used only Twitter or both Twitter and Instagram. For those using both Twitter and Facebook, loneliness was reduced when users accessed Twitter and Facebook more frequently but was increased when they posted more tweets. Users of all three social media were lonelier and had lower levels of well-being when they accessed Facebook via PC longer; whereas their their access time of Facebook via smartphones helped them decrease loneliness and improve their levels of well-being. Originality/value The findings reported here provide possible explanations for the conflicting results reported in previous research by exploring why users choose different social media platforms to communicate with different groups of friends or acquaintances and different usage patterns that affect their loneliness and well-being.


Significance The new rules follow a stand-off between Twitter and the central government last month over some posts and accounts. The government has used this stand-off as an opportunity not only to tighten rules governing social media, including Twitter, WhatsApp, Facebook and LinkedIn, but also those for other digital service providers including news publishers and entertainment streaming companies. Impacts Government moves against dominant social media platforms will boost the appeal of smaller platforms with light or no content moderation. Hate speech and harmful disinformation are especially hard to control and curb on smaller platforms. The new rules will have a chilling effect on online public discourse, increasing self-censorship (at the very least). Government action against online news media would undercut fundamental democratic freedoms and the right to dissent. Since US-based companies dominate key segments of the Indian digital market, India’s restrictive rules could mar India-US ties.


2015 ◽  
Vol 24 (1) ◽  
pp. 28-42 ◽  
Author(s):  
Laurence Dessart ◽  
Cleopatra Veloutsou ◽  
Anna Morgan-Thomas

Purpose – This paper aims to delineate the meaning, conceptual boundaries and dimensions of consumer engagement within the context of online brand communities both in term of the engagement with the brand and the other members of the online brand communities. It also explores the relationships of consumer engagement with other concepts, suggesting antecedents of engagement. Design/methodology/approach – Data are collected through semi-structured interviews with 21 international online brand community members, covering a variety of brand categories and social media platforms. Findings – This paper suggests that individuals are engaging in online communities in social network platforms both with other individuals and with brands. The study also identifies three key engagement dimensions (cognition, affect and behaviours). Their meaning and sub-dimensions are investigated. The paper further suggests key drivers, one outcome and objects of consumer engagement in online brand communities. These findings are integrated in a conceptual framework. Research limitations/implications – Further research should aim at comparing consumer engagement on different social media and across brand categories, as this study takes a holistic approach and does not focus on any particular category of brands or social media. Consumers’ views should also be evaluated against and compared with marketing managers’ understanding of consumer engagement. Originality/value – This paper contributes to the fast-growing and fragmented consumer engagement literature by refining the understanding of its dimensions and situating it in a network of conceptual relationships. It focusses on online brand communities in rich social media contexts to tap into the core social and interactive characteristics of engagement.


2018 ◽  
Vol 8 (3) ◽  
pp. 235-256 ◽  
Author(s):  
Ashleigh-Jane Thompson ◽  
Andrew J. Martin ◽  
Sarah Gee ◽  
Andrea N. Geurin

Purpose As the popularity of social media increases, sports brands must develop specific strategies to use them to enhance fan loyalty and build brand equity. The purpose of this paper is to explore how two social media platforms were utilised by the Grand Slam tennis events to achieve branding and relationship marketing goals. Design/methodology/approach A content analytic design was employed to examine Twitter and Facebook posts from the official accounts during, and post-, each respective event. Findings Both sites were utilised to cultivate long-term relationships with fans and develop brand loyalty, rather than to undertake short-term marketing activations. However, these sites appear to serve a different purpose, and therefore unique strategies are required to leverage opportunities afforded by each. Interestingly, brand associations were utilised more frequently during the post-event time period. Practical implications This study offers practitioners with useful insight on branding and relationship-building strategies across two social platforms. These results suggest that strategies appear dependent on the event, timeframe and specific platform. Moreover, the events’ differences in post use and focus may also indicate some differences related to event branding in an international context. Furthermore, sport organisations should look to leverage creative strategies to overcome limitations that platform-specific functionality may impose. Originality/value This study offers unique insights brand-building efforts in an international event setting, which differ in a range of contextual factors that impact on social media utilisation.


2017 ◽  
Vol 8 (1) ◽  
pp. 133-147 ◽  
Author(s):  
Seonjeong Ally Lee ◽  
Minwoo Lee

Purpose The purpose of this study is to investigate different types of customer relationships on customers’ interaction with the brand, based on prior social media and relationship marketing research. Design/methodology/approach A cross-sectional, self-administered online survey was conducted to investigate the role of different types of relationships on customers’ brand-relevant responses in the context of hotel social media platforms. Findings Results identified customers’ relationships with services and brands, and how other customers influenced their parasocial interactions (PSIs). Customers’ PSIs then positively influenced their self-brand connection and their brand usage intention. Originality/value This study was the first attempt to propose a conceptual framework to explain different types of customer relationships on customers’ interactions with the brand in the context of hotel social media platforms.


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