Environmental Politics: Could Social Media in Greece Foster the Ground for an Alternative Environmental Agenda?
The sharing of news across various social media platforms has become an integral part of our daily information intake. But our understanding of the specific types of environmental news stories that gain widespread traction across diverse media platforms remains limited. In our study we examine the most popular posts appearing on Facebook and Twitter for a three-month period (September – November 2021). Our research revealed that social media users predominantly depend on traditional media outlets rather than seeking information from alternative news sources. The news shared on social media platforms primarily originates from political actors and institutions, either in the form of statements or press releases. This content tends to focus on the societal and economic implications of the crisis. Consequently, social media in Greece has not yet managed to establish an alternative narrative or agenda surrounding this issue.
- Research Article
6
- 10.1080/1051712x.2021.1920697
- Apr 3, 2021
- Journal of Business-to-Business Marketing
Purpose: Overwhelmed by the huge rise in the number of social media (SM) platforms, B to B firms have been increasingly using multiple social media (SM) platforms to enhance their relationships with their customers. The purpose of this study is to investigate the influence of the competitive pressure to use SM on B to B firms use of multiple SM platforms, organization and individual SM competences and on relationship sales performance. Method: An online survey is implemented to collect data from B to B firms from different industries in an emerging market, i.e. Kuwait, to produce 152 usable questionnaires. Structural equation modeling is carried out using Smart PLS 3. Findings: The main findings show that competitive pressure to use SM fully influences relationship sales performance through individual social media competence. It also influences relationship sales performance through two mediations (1) organizational SM competence, (2) on a less important level, through the use of multiple SM platforms and organizational SM competence. Additionally, both organization and individual SM competence are found to significantly influence relationship sales performance. Implications: This study uncovers the complex mechanism through which competitive pressures to use social media influence both individual and organization social media competence and their relationship with their customers. It demonstrates that the use of multiple SM platforms significantly increases relationship sales performance, but this influence is weak. Therefore, top managers must choose the right number of SM platforms and design clear SM strategies. Originality: This study sheds light on the influence of competitive pressure to use SM on B to B firms’ relationships with their customers i.e. relationship sales performance. This coercive pressure could potentially spread B to B firms’ resources over a large number of SM and lead to poor SM presence. The study also emphasizes the role of top management in choosing the optimal combination of SM platforms and developing their organization SM competence.
- Research Article
42
- 10.1053/j.ackd.2013.04.001
- Jun 26, 2013
- Advances in Chronic Kidney Disease
Using Digital Media to Promote Kidney Disease Education
- Research Article
80
- 10.5204/mcj.561
- Oct 11, 2012
- M/C Journal
Lists and Social MediaLists have long been an ordering mechanism for computer-mediated social interaction. While far from being the first such mechanism, blogrolls offered an opportunity for bloggers to provide a list of their peers; the present generation of social media environments similarly provide lists of friends and followers. Where blogrolls and other earlier lists may have been user-generated, the social media lists of today are more likely to have been produced by the platforms themselves, and are of intrinsic value to the platform providers at least as much as to the users themselves; both Facebook and Twitter have highlighted the importance of their respective “social graphs” (their databases of user connections) as fundamental elements of their fledgling business models. This represents what Mejias describes as “nodocentrism,” which “renders all human interaction in terms of network dynamics (not just any network, but a digital network with a profit-driven infrastructure).”The communicative content of social media spaces is also frequently rendered in the form of lists. Famously, blogs are defined in the first place by their reverse-chronological listing of posts (Walker Rettberg), but the same is true for current social media platforms: Twitter, Facebook, and other social media platforms are inherently centred around an infinite, constantly updated and extended list of posts made by individual users and their connections.The concept of the list implies a certain degree of order, and the orderliness of content lists as provided through the latest generation of centralised social media platforms has also led to the development of more comprehensive and powerful, commercial as well as scholarly, research approaches to the study of social media. Using the example of Twitter, this article discusses the challenges of such “big data” research as it draws on the content lists provided by proprietary social media platforms.Twitter Archives for ResearchTwitter is a particularly useful source of social media data: using the Twitter API (the Application Programming Interface, which provides structured access to communication data in standardised formats) it is possible, with a little effort and sufficient technical resources, for researchers to gather very large archives of public tweets concerned with a particular topic, theme or event. Essentially, the API delivers very long lists of hundreds, thousands, or millions of tweets, and metadata about those tweets; such data can then be sliced, diced and visualised in a wide range of ways, in order to understand the dynamics of social media communication. Such research is frequently oriented around pre-existing research questions, but is typically conducted at unprecedented scale. The projects of media and communication researchers such as Papacharissi and de Fatima Oliveira, Wood and Baughman, or Lotan, et al.—to name just a handful of recent examples—rely fundamentally on Twitter datasets which now routinely comprise millions of tweets and associated metadata, collected according to a wide range of criteria. What is common to all such cases, however, is the need to make new methodological choices in the processing and analysis of such large datasets on mediated social interaction.Our own work is broadly concerned with understanding the role of social media in the contemporary media ecology, with a focus on the formation and dynamics of interest- and issues-based publics. We have mined and analysed large archives of Twitter data to understand contemporary crisis communication (Bruns et al), the role of social media in elections (Burgess and Bruns), and the nature of contemporary audience engagement with television entertainment and news media (Harrington, Highfield, and Bruns). Using a custom installation of the open source Twitter archiving tool yourTwapperkeeper, we capture and archive all the available tweets (and their associated metadata) containing a specified keyword (like “Olympics” or “dubstep”), name (Gillard, Bieber, Obama) or hashtag (#ausvotes, #royalwedding, #qldfloods). In their simplest form, such Twitter archives are commonly stored as delimited (e.g. comma- or tab-separated) text files, with each of the following values in a separate column: text: contents of the tweet itself, in 140 characters or less to_user_id: numerical ID of the tweet recipient (for @replies) from_user: screen name of the tweet sender id: numerical ID of the tweet itself from_user_id: numerical ID of the tweet sender iso_language_code: code (e.g. en, de, fr, ...) of the sender’s default language source: client software used to tweet (e.g. Web, Tweetdeck, ...) profile_image_url: URL of the tweet sender’s profile picture geo_type: format of the sender’s geographical coordinates geo_coordinates_0: first element of the geographical coordinates geo_coordinates_1: second element of the geographical coordinates created_at: tweet timestamp in human-readable format time: tweet timestamp as a numerical Unix timestampIn order to process the data, we typically run a number of our own scripts (written in the programming language Gawk) which manipulate or filter the records in various ways, and apply a series of temporal, qualitative and categorical metrics to the data, enabling us to discern patterns of activity over time, as well as to identify topics and themes, key actors, and the relations among them; in some circumstances we may also undertake further processes of filtering and close textual analysis of the content of the tweets. Network analysis (of the relationships among actors in a discussion; or among key themes) is undertaken using the open source application Gephi. While a detailed methodological discussion is beyond the scope of this article, further details and examples of our methods and tools for data analysis and visualisation, including copies of our Gawk scripts, are available on our comprehensive project website, Mapping Online Publics.In this article, we reflect on the technical, epistemological and political challenges of such uses of large-scale Twitter archives within media and communication studies research, positioning this work in the context of the phenomenon that Lev Manovich has called “big social data.” In doing so, we recognise that our empirical work on Twitter is concerned with a complex research site that is itself shaped by a complex range of human and non-human actors, within a dynamic, indeed volatile media ecology (Fuller), and using data collection and analysis methods that are in themselves deeply embedded in this ecology. “Big Social Data”As Manovich’s term implies, the Big Data paradigm has recently arrived in media, communication and cultural studies—significantly later than it did in the hard sciences, in more traditionally computational branches of social science, and perhaps even in the first wave of digital humanities research (which largely applied computational methods to pre-existing, historical “big data” corpora)—and this shift has been provoked in large part by the dramatic quantitative growth and apparently increased cultural importance of social media—hence, “big social data.” As Manovich puts it: For the first time, we can follow [the] imaginations, opinions, ideas, and feelings of hundreds of millions of people. We can see the images and the videos they create and comment on, monitor the conversations they are engaged in, read their blog posts and tweets, navigate their maps, listen to their track lists, and follow their trajectories in physical space. (Manovich 461) This moment has arrived in media, communication and cultural studies because of the increased scale of social media participation and the textual traces that this participation leaves behind—allowing researchers, equipped with digital tools and methods, to “study social and cultural processes and dynamics in new ways” (Manovich 461). However, and crucially for our purposes in this article, many of these scholarly possibilities would remain latent if it were not for the widespread availability of Open APIs for social software (including social media) platforms. APIs are technical specifications of how one software application should access another, thereby allowing the embedding or cross-publishing of social content across Websites (so that your tweets can appear in your Facebook timeline, for example), or allowing third-party developers to build additional applications on social media platforms (like the Twitter user ranking service Klout), while also allowing platform owners to impose de facto regulation on such third-party uses via the same code. While platform providers do not necessarily have scholarship in mind, the data access affordances of APIs are also available for research purposes. As Manovich notes, until very recently almost all truly “big data” approaches to social media research had been undertaken by computer scientists (464). But as part of a broader “computational turn” in the digital humanities (Berry), and because of the increased availability to non-specialists of data access and analysis tools, media, communication and cultural studies scholars are beginning to catch up. Many of the new, large-scale research projects examining the societal uses and impacts of social media—including our own—which have been initiated by various media, communication, and cultural studies research leaders around the world have begun their work by taking stock of, and often substantially extending through new development, the range of available tools and methods for data analysis. The research infrastructure developed by such projects, therefore, now reflects their own disciplinary backgrounds at least as much as it does the fundamental principles of computer science. In turn, such new and often experimental tools and methods necessarily also provoke new epistemological and methodological challenges. The Twitter API and Twitter ArchivesThe Open
- Book Chapter
1
- 10.1007/978-981-15-7961-5_122
- Oct 12, 2020
To determine which social media analytics tools, techniques, and platforms were developed in recent times, this paper reviews tools, techniques, and platforms related to social media analytics. In this paper, we talk about the tools used to deal with various social media data (social networking, media, etc.). In the past decade, there has been advancement in the technologies used to deal with social media as there has been an increase in the number of people using social media to share information and also the development of the new social media platforms that have let to increase in the amount of data that we have to deal with. Social media platforms have a considerable number of users across the world, which is overgrowing. These people are sharing information through these sources. There is a large quantity of social data comprising of data related to users, videos, web-based relations, and interactions, etc. which needs to be analyzed. Therefore analyzing social media data has become a significant activity for researchers, mainly due to the availability of the web-based API from social media platforms like twitter, facebook [1], Gmail, etc. This has also led to the development of data services, software tools for analyzing social media data. In this paper, there is a detailed review of the leading software tools and techniques that are used for scraping, cleaning, and analyzing social media data.
- Research Article
- 10.5075/epfl-thesis-7495
- Jan 1, 2017
Social media (SM) platforms have demonstrated their ability to facilitate knowledge sharing on the global scale. They are increasingly often employed in educational and humanitarian domains where, despite their general benefits, they expose challenges peculiar to these domains. Specifically, the research context of this thesis is directed by my participation in the Go-Lab European project and my collaboration with Medecins Sans Frontieres (MSF) where SM platforms were used extensively. In this thesis, we address four challenges regarding analytics, privacy, discovery, and delivery, aiming to answer corresponding four research questions. How to provide user-oriented analytics in knowledge sharing systems to support awareness and reflection? What privacy management interfaces and mechanisms are suitable for knowledge analytics and learning analytics? How to enable discovery of knowledge relevant to user interests? How to facilitate knowledge delivery into settings where Internet connectivity is limited or absent? Henceforward, we provide an overview of our results. Analytics. To enable awareness and reflection for an SM platform users, we propose the embedded contextual analytics model where the analytics is embedded into the interaction context and presents information relevant to that particular context. Also, we propose two general architectures materializing this model respectfully based on real-time analytical applications and a scalable analytic back-end. Using these architectures, we provided analytics services to the SM platform users. We conducted an evaluation with the users demonstrating that embedded contextual analytics was useful to support their awareness and reflection. Privacy. To address the privacy concerns associated with the recording, storage, and analysis of user interaction traces, we propose a novel agent-based privacy management model. Our proposal uses a metaphor of physical presence of a tracking agent in an interaction context making the platform user aware of the tracking and allows to manage the tracking policy in a way similar to the physical world. We have implemented the proposed privacy interface in an SM platform and obtained positive evaluation results with the users. Discovery. Due to a large number of content items stored in SM platforms, it can be challenging for the users to find relevant knowledge. Addressing this challenge, we propose an interactive recommender system based on user interests enabling discovery of relevant content and people. We have implemented the proposed recommender in an SM platform and conducted two evaluations with platform users. The evaluations demonstrated the ability of the approach to identify relevant user interests and to recommend relevant content. Delivery. At the moment of writing in 2016, near half of the world's population still does not have reliable Internet access. Often, the places where humanitarian action is needed have limited Internet connection. We propose a novel knowledge delivery model that relies on a peer-to-peer middleware and uses low-cost computers for local knowledge replication. We have developed a system implementing the model and evaluated it during eight deployments in MSF missions. The evaluation demonstrated its knowledge delivery abilities and its usefulness for the field staff.
- Research Article
- 10.1215/15525864-9767996
- Jul 1, 2022
- Journal of Middle East Women's Studies
From Café Culture to Tweets
- Research Article
10
- 10.5937/turizam24-24429
- Jan 1, 2020
- Turizam
In recent years Social Media (SM) platforms are becoming highly significant for the tourism industry as a medium for information exchange and communication platforms for tourists and travelers. Tourists are using Web 2.0 platforms to plan their travel, book hotels, confirm and cancel reservations, enquire about packages and itineraries, to read reviews posted by other travelers, and also to share their travel experiences by posting reviews, comments, ratings, photographs, etc. with others. The purpose of this study is to determine the influence of user-generated-contents on social media platforms in the travel planning of tourists in Udaipur, India. This study analyze the opinion of tourists regarding the benefits of social media and travel material posted on various social media platforms and to draw factors that are helpful in influencing the use of information through social media. To fulfill the objectives, primary data was collected by using a judgmental sampling method and a 5-point Likert type scale through a structured questionnaire. A sample of 309 respondents who visited Udaipur as a tourist during the period of early October 2017 to the end of March 2018 was surveyed. Using descriptive statistics and factor analysis results were presented and explained. The findings revealed that tourists have a positive opinion towards online reviews and travel material posted on social sites. The majority of the tourist respondents opined that online reviews, ratings, and comments, etc. regarding travel destinations, hotels, food, and climate, etc. help in their travel planning and travel related decisions. The results of factor analyses demonstrated that three factors namely; social media ease and trust, social media risk reduction and helpfulness and social media enhance joy and excitement were considered helpful in influencing the use of information through social media sites.
- Research Article
- 10.1016/j.ptdy.2022.08.012
- Sep 1, 2022
- Pharmacy Today
Beware: Patients increasingly purchasing medications via social media
- Research Article
1
- 10.3390/journalmedia6020062
- Apr 26, 2025
- Journalism and Media
Social media (SM) platforms allow users to communicate rapidly, exchange information, and create and share real-time content. Currently, 4.5 billion people use social media worldwide, making it an influential part of daily life. Beyond information sharing, social media facilitates communication, transfers information, and serves as a platform for advertising and shaping public opinion. Researchers analyse these aspects to understand and describe societal realities. The primary purpose of this paper is to analyse social media’s impact on global research. The research included an analysis of the most popular social platforms, considering the number of Web of Science (WoS) articles relating to them and the year in which the platform was established or the Monthly Active Users (MAU) factor. Data were collected based on the WoS database in the topic (which contains texts of title, abstract, author keywords, and Keywords Plus) of the articles, where phrases containing names of SM platforms were used. Quantitative research is a type of research that analyses data numerically to find relationships and statistical regularities of searched phrases. The impact of social media on the dissemination of research and findings was analysed based on the results of the study and also on the literature data. This research reveals a lack of correlation between the number of articles indexed in the WoS and the MAU of individual social media platforms. This observation raises an important question: do social media researchers focus on studying the platforms used by the majority, thereby providing a more accurate representation of current social dynamics? This article is helpful for researchers, policymakers, and social media platform developers seeking to understand the role of social media in shaping modern communication and public discourse. The most important finding of the paper is the low correlation between the number of SM users and the impact of social media platforms on learning, as exemplified by the Twitter (Note: Twitter was an American social networking service rebranded as X in 2023. As the period of data analysed in this paper covered the years up to 2022, the authors decided to stay with the name Twitter) platform, which is the 17th largest SM platform but is the 2nd (after Facebook) in implications for science.
- Research Article
- 10.22161/ijels.103.16
- Jan 1, 2025
- International Journal of English Literature and Social Sciences
This paper will analyse women representation in social media discourse by applying Multimodal Critical Discourse Analysis and will investigate how women are represented linguistically and visually on social media platforms like Instagram, Sanpchat, X and Utube. The data has been gathered from verified and unverified social media accounts with the help of convenient random sampling. The material is in the form of photos, written texts, and videos for a thorough examination. The chosen accounts include X handles like Richard Cooper, the Instagram accounts parity_colorism and thesolidaritysisters. The select Snapchat handles include DRESS CODE, Girls Only. Care has been taken that these posts represent both male and female worlds and the researcher will make the case that the social media content is fundamentally ideological, and that regular events, actions, and issues posted on social media articulate dominant (and occasionally alternative) ideological discourses about the prejudiced nature of our society. It shall be argued that gender politics is present in all types of social media comments and platforms, not so much in terms of formal politics but a more banal and everyday kind. The marketing of these accounts is the hidden motivation behind posting such posts and they do not support the idea that these technologies are democratic or impartial by nature. This paper will also investigate the social contexts within which symbolic forms are employed and deployed to determine whether such forms establish or sustain relations of domination and whether ideological analysis of all elements of the social media content come together to tell the same story that is, patriarchal capitalism. Considering the insights that social media discourse is structured by male dominance; that every discourse is historically produced and interpreted and that dominance structures are legitimated by ideologies of powerful groups(male), this paper will specifically consider gender and social media discourses in the broadest sense, to testify overt relations of gender bias and social inequality. It will also dissect sexism and female objectification by using the Dialectical Relational Approach and suggest ways to reduce gender bias through social media.
- Research Article
18
- 10.1080/07421222.2022.2063550
- Apr 3, 2022
- Journal of Management Information Systems
Driven by the need to enhance user traffic on social media (SM) platforms for increasing their advertising revenues, SM platforms are experimenting with new content creation features. However, it is unclear if such initiatives are also beneficial for SM profile owners such as influencers, who are the prime content creators on the SM platforms who use SM posts to build their influence within their network of followers. Our study investigates the effect of introducing one such new SM feature: the “story” on the creation and consumption of SM posts. Leveraging social penetration theory, we hypothesize the influence of introducing story feature on (1) the frequency of SM post creation by profile owners and (2) the extent of follower engagement with SM posts. Employing a quasi-experimental design, we find that the introduction of the story feature reduces the frequency of SM post creation, but the enhanced self-disclosure through the story feature increases follower engagement with the SM posts. However, these effects are moderated by the situating culture of the SM communities: while low-power-distance cultures value profile owners’ self-disclosure, high-power-distance cultures exhibit a mixed influence. Advancing literature on social penetration theory and SM user engagement, our study demonstrates that new self-disclosive SM content creation features do not necessarily benefit all the concerned stakeholders and that the effectiveness of such features might vary from one community to another. Hence, the intended impact of introducing new SM features needs to be carefully evaluated by SM platforms in a holistic manner.
- Research Article
- 10.5204/mcj.956
- Apr 29, 2015
- M/C Journal
Government Surveillance and Counter-Surveillance on Social and Mobile Media: The Case of Iran (2009)
- Research Article
1
- 10.29103/icospolhum.v4i.408
- Jan 26, 2024
- Proceedings of International Conference on Social Science, Political Science, and Humanities (ICoSPOLHUM)
Political public space in social media platforms the 2024 election will be attention Lots circles. Conflict discourse in room public political via social media platforms of course is something common and significant in context modern democracy. However when blunt make room public in social media disturbing or not Healthy. Social media has become receptacle for individual, group and society for convey opinion, discourse, opinion, information, interact in a way wide and others. Social Media has significant role in shape, influence opinions and choices political in election. Moment election is notes important in system democracy in Indonesia. Study This aim for analyze phenomenon conflict political public space in social media platforms. Use approach qualitative descriptive with analyze various source news, reports, public opinion and social media realit. Research result show that discourse conflict public space in social media the 2024 election occurs in a number of aspect among others; conflict between party politics, team success, conflict support and inter supporters. Social media often present incident violence and provocation. Even conflict between social media platforms That Alone. Competition business and interests politics. Conflict This can influence content, discourse and narrative. Study this is also revealing that phenomenon conflict public space in social media own significant impact to the public and the democratic process. Conflict can increase polarization and strengthening extreme attitudes between public. Besides Therefore, conflict can also occur obscure issue substance and diversion attention public of the important agendas that must be done discussed in election. Needed social media literacy, digital literacy and politics No only for public, also share party politics, the government is also a social media activist. Guard ethics, politeness and present regulations media social in every elections in Indonesia. In context this is important collaboration in a way harmonious both media platforms, actors capital business, government, party politics, organizer elections, and the public for you're welcome responsible answer presents a step-by-step process the 2024 election will mature, educate, give birth to an aura of harmonization.
- Research Article
93
- 10.2196/jmir.6426
- Oct 31, 2017
- Journal of Medical Internet Research
BackgroundSubstance use–related communication for drug use promotion and its prevention is widely prevalent on social media. Social media big data involve naturally occurring communication phenomena that are observable through social media platforms, which can be used in computational or scalable solutions to generate data-driven inferences. Despite the promising potential to utilize social media big data to monitor and treat substance use problems, the characteristics, mechanisms, and outcomes of substance use–related communications on social media are largely unknown. Understanding these aspects can help researchers effectively leverage social media big data and platforms for observation and health communication outreach for people with substance use problems.ObjectiveThe objective of this critical review was to determine how social media big data can be used to understand communication and behavioral patterns of problematic use of prescription drugs. We elaborate on theoretical applications, ethical challenges and methodological considerations when using social media big data for research on drug abuse and addiction. Based on a critical review process, we propose a typology with key initiatives to address the knowledge gap in the use of social media for research on prescription drug abuse and addiction.MethodsFirst, we provided a narrative summary of the literature on drug use–related communication on social media. We also examined ethical considerations in the research processes of (1) social media big data mining, (2) subgroup or follow-up investigation, and (3) dissemination of social media data-driven findings. To develop a critical review-based typology, we searched the PubMed database and the entire e-collection theme of “infodemiology and infoveillance” in the Journal of Medical Internet Research / JMIR Publications. Studies that met our inclusion criteria (eg, use of social media data concerning non-medical use of prescription drugs, data informatics-driven findings) were reviewed for knowledge synthesis. User characteristics, communication characteristics, mechanisms and predictors of such communications, and the psychological and behavioral outcomes of social media use for problematic drug use–related communications are the dimensions of our typology. In addition to ethical practices and considerations, we also reviewed the methodological and computational approaches used in each study to develop our typology.ResultsWe developed a typology to better understand non-medical, problematic use of prescription drugs through the lens of social media big data. Highly relevant studies that met our inclusion criteria were reviewed for knowledge synthesis. The characteristics of users who shared problematic substance use–related communications on social media were reported by general group terms, such as adolescents, Twitter users, and Instagram users. All reviewed studies examined the communication characteristics, such as linguistic properties, and social networks of problematic drug use–related communications on social media. The mechanisms and predictors of such social media communications were not directly examined or empirically identified in the reviewed studies. The psychological or behavioral consequence (eg, increased behavioral intention for mimicking risky health behaviors) of engaging with and being exposed to social media communications regarding problematic drug use was another area of research that has been understudied.ConclusionsWe offer theoretical applications, ethical considerations, and empirical evidence within the scope of social media communication and prescription drug abuse and addiction. Our critical review suggests that social media big data can be a tremendous resource to understand, monitor and intervene on drug abuse and addiction problems.
- Research Article
- 10.1515/ijamh-2025-0163
- Nov 26, 2025
- International journal of adolescent medicine and health
Adolescents generally use social media in groups of applications or platforms with a latent pattern. As neurobiological studies suggest that social media platforms stimulate the brain in diverse ways, we hypothesize that certain social media use patterns may be more prone to addiction than others. The objectives of this study are: 1) to describe patterns of social media platform co-use among school-going adolescents in Thailand, and; 2) to describe the extent to which social media co-use patterns are associated with social media addiction. We conducted a nationally representative cross-sectional study among 23,659 secondary school students from 113 schools across Thailand between November 2020 and March 2021. We asked participants to self-report the social media applications and platforms that they had used in the past 12months. We used latent class analysis (LCA) to identify social media usage patterns, and assessed the patterns' association with social media addiction scores using multivariable linear regression. Among our participants, 86.1 % had used social media within the past 30days. Facebook was the most commonly used platform, followed by YouTube and Line. We identified two distinct social media use patterns: 1) Common use of Line, Facebook, and YouTube ("Basic Combo"); 2) Basic Combo with other platforms such as Twitter, TikTok, and Instagram ("Basic Combo Plus"). The "Basic Combo Plus" pattern participants exhibited higher levels of withdrawal, persistence, and escapism in social media use compared to the "Basic Combo" pattern participants (all p-value <0.05). The number of social media platforms correlates with social media addiction level. However, limited generalizability, the lack of detail regarding social media use, and potential information bias should be considered as caveats in the interpretation of the study findings.
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