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Online Social Networks: Why We Disclose

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TLDR
It is found that users are primarily motivated to disclose information because of the convenience of maintaining and developing relationships and platform enjoyment, and users’ perception of risk can be mitigated by their trust in the network provider and availability of control options.
Abstract
On Online Social Networks such as Facebook, massive self-disclosure by users has attracted the attention of industry players and policymakers worldwide. Despite the impressive scope of this phenomenon, very little is understood about what motivates users to disclose personal information. Integrating focus group results into a theoretical privacy calculus framework, we develop and empirically test a Structural Equation Model of self-disclosure with 259 subjects. We find that users are primarily motivated to disclose information due to the convenience of maintaining and developing relationships and platform enjoyment. Countervailing these benefits, privacy risks represent a critical barrier to information disclosure. However, users’ perception of risk can be mitigated by their trust in the Network Provider and availability of control options. Based on these findings, we offer recommendations for Network Providers.

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Citations
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Advances in Social Media Research: Past, Present and Future

TL;DR: The integrated view of the extant literature that the study presents can help avoid duplication by future researchers, whilst offering fruitful lines of enquiry to help shape research for this emerging field of social media research.
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The Impact of Context Collapse and Privacy on Social Network Site Disclosures

TL;DR: In this paper, the authors present a model including network composition, disclosures, privacy-based strategies, and social capital, and find that audience size and diversity impacts disclosure and use of advanced privacy settings.
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Giving too much social support: social overload on social networking sites

TL;DR: The results show that extent of usage, number of friends, subjective social support norms, and type of relationship are factors that directly contribute to social overload while age has only an indirect effect.
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Information privacy and correlates: an empirical attempt to bridge and distinguish privacy-related concepts

TL;DR: This study develops and tests a framework of information privacy and its correlates, based on the privacy theories of Westin and Altman, the economic view of the privacy calculus, and the identity management framework, that is useful for privacy advocates, and legal, management information systems, marketing, and social science scholars.
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Is the privacy paradox a relic of the past? An in‐depth analysis of privacy attitudes and privacy behaviors

TL;DR: It was found that online privacy concerns were not significantly related to specific privacy behaviors, such as the frequency or content of disclosures on SNSs, which demonstrated that the privacy paradox still exists when it is operationalized as in prior research.
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