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  1. Article ; Online: It takes guts to be a rebel!

    Zheng, Xia / Lang, Annie / Almond, Anthony / Yan, Harry Yaojun

    Politics and the life sciences : the journal of the Association for Politics and the Life Sciences

    2023  Volume 41, Issue 1, Page(s) 28–37

    Abstract: This study tests two sets of competing hypotheses about the relationship between trait reactivity to positive and negative stimuli (i.e., motivational reactivity), moral stances on social principles (i.e., social morality), and political ideology. ... ...

    Abstract This study tests two sets of competing hypotheses about the relationship between trait reactivity to positive and negative stimuli (i.e., motivational reactivity), moral stances on social principles (i.e., social morality), and political ideology. The
    MeSH term(s) Humans ; Motivation ; Morals ; Phenotype ; Social Environment
    Language English
    Publishing date 2023-02-17
    Publishing country United States
    Document type Journal Article
    ZDB-ID 2040372-0
    ISSN 1471-5457 ; 0730-9384
    ISSN (online) 1471-5457
    ISSN 0730-9384
    DOI 10.1017/pls.2022.5
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  2. Article ; Online: Exposure to social bots amplifies perceptual biases and regulation propensity.

    Yan, Harry Yaojun / Yang, Kai-Cheng / Shanahan, James / Menczer, Filippo

    Scientific reports

    2023  Volume 13, Issue 1, Page(s) 20707

    Abstract: Automated accounts on social media that impersonate real users, often called "social bots," have received a great deal of attention from academia and the public. Here we present experiments designed to investigate public perceptions and policy ... ...

    Abstract Automated accounts on social media that impersonate real users, often called "social bots," have received a great deal of attention from academia and the public. Here we present experiments designed to investigate public perceptions and policy preferences about social bots, in particular how they are affected by exposure to bots. We find that before exposure, participants have some biases: they tend to overestimate the prevalence of bots and see others as more vulnerable to bot influence than themselves. These biases are amplified after bot exposure. Furthermore, exposure tends to impair judgment of bot-recognition self-efficacy and increase propensity toward stricter bot-regulation policies among participants. Decreased self-efficacy and increased perceptions of bot influence on others are significantly associated with these policy preference changes. We discuss the relationship between perceptions about social bots and growing dissatisfaction with the polluted social media environment.
    MeSH term(s) Humans ; Software ; Social Media ; Policy ; Bias ; Prevalence
    Language English
    Publishing date 2023-11-24
    Publishing country England
    Document type Journal Article
    ZDB-ID 2615211-3
    ISSN 2045-2322 ; 2045-2322
    ISSN (online) 2045-2322
    ISSN 2045-2322
    DOI 10.1038/s41598-023-46630-x
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  3. Article ; Online: Black Lives Matter protests shift public discourse.

    Dunivin, Zackary Okun / Yan, Harry Yaojun / Ince, Jelani / Rojas, Fabio

    Proceedings of the National Academy of Sciences of the United States of America

    2022  Volume 119, Issue 10, Page(s) e2117320119

    Abstract: SignificanceThis study uses large-scale news media and social media data to show that nationwide Black Lives Matter (BLM) protests occur concurrently with sharp increases in public attention to components of the BLM agenda. We also show that attention to ...

    Abstract SignificanceThis study uses large-scale news media and social media data to show that nationwide Black Lives Matter (BLM) protests occur concurrently with sharp increases in public attention to components of the BLM agenda. We also show that attention to BLM and related concepts is not limited to these brief periods of protest but is sustained after protest has ceased. This suggests that protest events incited a change in public awareness of BLM's vision of social change and the dissemination of antiracist ideas into popular discourse.
    MeSH term(s) African Americans ; Humans ; Public Opinion ; Racism ; Social Change ; Social Media ; United States
    Language English
    Publishing date 2022-03-03
    Publishing country United States
    Document type Journal Article
    ZDB-ID 209104-5
    ISSN 1091-6490 ; 0027-8424
    ISSN (online) 1091-6490
    ISSN 0027-8424
    DOI 10.1073/pnas.2117320119
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  4. Article ; Online: Pornography Use, Two Forms of Dehumanization, and Sexual Aggression: Attitudes vs. Behaviors.

    Zhou, Yanyan / Liu, Tuo / Yan, Harry Yaojun / Paul, Bryant

    Journal of sex & marital therapy

    2021  Volume 47, Issue 6, Page(s) 571–590

    Abstract: Sexual objectification is a common pornographic theme. Research shows that sexual objectification leads to the expression of aggressive attitudes and behaviors toward women. Based on a survey study of 320 male participants, this study re-conceptualizes ... ...

    Abstract Sexual objectification is a common pornographic theme. Research shows that sexual objectification leads to the expression of aggressive attitudes and behaviors toward women. Based on a survey study of 320 male participants, this study re-conceptualizes sexual objectification in terms of two forms of dehumanization. Evidence suggests men's pornography use is positively associated with both forms, but mechanistic dehumanization of women is more associated with aggressive attitudes while animalistic dehumanization is more associated with aggressive behaviors. Findings indicate how objectifying pornography use may relate to aggressive attitudes and behaviors and inform the future education campaigns and interventions to reduce sexual aggression.
    MeSH term(s) Aggression ; Attitude ; Dehumanization ; Erotica ; Female ; Humans ; Male ; Sexual Behavior
    Language English
    Publishing date 2021-05-14
    Publishing country England
    Document type Journal Article
    ZDB-ID 752393-2
    ISSN 1521-0715 ; 0092-623X
    ISSN (online) 1521-0715
    ISSN 0092-623X
    DOI 10.1080/0092623X.2021.1923598
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  5. Book ; Online: Artificial intelligence is ineffective and potentially harmful for fact checking

    DeVerna, Matthew R. / Yan, Harry Yaojun / Yang, Kai-Cheng / Menczer, Filippo

    2023  

    Abstract: Fact checking can be an effective strategy against misinformation, but its implementation at scale is impeded by the overwhelming volume of information online. Recent artificial intelligence (AI) language models have shown impressive ability in fact- ... ...

    Abstract Fact checking can be an effective strategy against misinformation, but its implementation at scale is impeded by the overwhelming volume of information online. Recent artificial intelligence (AI) language models have shown impressive ability in fact-checking tasks, but how humans interact with fact-checking information provided by these models is unclear. Here we investigate the impact of fact checks generated by a popular AI model on belief in, and sharing intent of, political news in a preregistered randomized control experiment. Although the AI performs reasonably well in debunking false headlines, we find that it does not significantly affect participants' ability to discern headline accuracy or share accurate news. However, the AI fact-checker is harmful in specific cases: it decreases beliefs in true headlines that it mislabels as false and increases beliefs for false headlines that it is unsure about. On the positive side, the AI increases sharing intents for correctly labeled true headlines. When participants are given the option to view AI fact checks and choose to do so, they are significantly more likely to share both true and false news but only more likely to believe false news. Our findings highlight an important source of potential harm stemming from AI applications and underscore the critical need for policies to prevent or mitigate such unintended consequences.
    Keywords Computer Science - Human-Computer Interaction ; Computer Science - Artificial Intelligence ; Computer Science - Computers and Society
    Subject code 160
    Publishing date 2023-08-21
    Publishing country us
    Document type Book ; Online
    Database BASE - Bielefeld Academic Search Engine (life sciences selection)

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  6. Article ; Online: Sociodemographics and Transdiagnostic Mental Health Symptoms in SOCIAL (Studies of Online Cohorts for Internalizing Symptoms and Language) I and II: Cross-sectional Survey and Botometer Analysis.

    Lorenzo-Luaces, Lorenzo / Howard, Jacqueline / Edinger, Andy / Yan, Harry Yaojun / Rutter, Lauren A / Valdez, Danny / Bollen, Johan

    JMIR formative research

    2022  Volume 6, Issue 10, Page(s) e39324

    Abstract: Background: Internalizing, externalizing, and somatoform disorders are the most common and disabling forms of psychopathology. Our understanding of these clinical problems is limited by a reliance on self-report along with research using small samples. ... ...

    Abstract Background: Internalizing, externalizing, and somatoform disorders are the most common and disabling forms of psychopathology. Our understanding of these clinical problems is limited by a reliance on self-report along with research using small samples. Social media has emerged as an exciting channel for collecting a large sample of longitudinal data from individuals to study psychopathology.
    Objective: This study reported the results of 2 large ongoing studies in which we collected data from Twitter and self-reported clinical screening scales, the Studies of Online Cohorts for Internalizing Symptoms and Language (SOCIAL) I and II.
    Methods: The participants were a sample of Twitter-using adults (SOCIAL I: N=1123) targeted to be nationally representative in terms of age, sex assigned at birth, race, and ethnicity, as well as a sample of college students in the Midwest (SOCIAL II: N=1988), of which 61.78% (1228/1988) were Twitter users. For all participants who were Twitter users, we asked for access to their Twitter handle, which we analyzed using Botometer, which rates the likelihood of an account belonging to a bot. We divided participants into 4 groups: Twitter users who did not give us their handle or gave us invalid handles (invalid), those who denied being Twitter users (no Twitter, only available for SOCIAL II), Twitter users who gave their handles but whose accounts had high bot scores (bot-like), and Twitter users who provided their handles and had low bot scores (valid). We explored whether there were significant differences among these groups in terms of their sociodemographic features, clinical symptoms, and aspects of social media use (ie, platforms used and time).
    Results: In SOCIAL I, most individuals were classified as valid (580/1123, 51.65%), and a few were deemed bot-like (190/1123, 16.91%). A total of 31.43% (353/1123) gave no handle or gave an invalid handle (eg, entered "N/A"). In SOCIAL II, many individuals were not Twitter users (760/1988, 38.23%). Of the Twitter users in SOCIAL II (1228/1988, 61.78%), most were classified as either invalid (515/1228, 41.94%) or valid (484/1228, 39.41%), with a smaller fraction deemed bot-like (229/1228, 18.65%). Participants reported high rates of mental health diagnoses as well as high levels of symptoms, especially in SOCIAL II. In general, the differences between individuals who provided or did not provide their social media handles were small and not statistically significant.
    Conclusions: Triangulating passively acquired social media data and self-reported questionnaires offers new possibilities for large-scale assessment and evaluation of vulnerability to mental disorders. The propensity of participants to share social media handles is likely not a source of sample bias in subsequent social media analytics.
    Language English
    Publishing date 2022-10-20
    Publishing country Canada
    Document type Journal Article
    ISSN 2561-326X
    ISSN (online) 2561-326X
    DOI 10.2196/39324
    Database MEDical Literature Analysis and Retrieval System OnLINE

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