真实性与排斥:社交媒体推荐算法与职业网络归属感的动态变化

Nil-Jana Akpinar, Sina Fazelpour
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引用次数: 0

摘要

同质性--相似性的吸引力--深刻地影响着社会互动,影响着关联、信息披露和社会交流的动力。组织研究表明,当职业界限和个人界限重叠时,来自少数群体背景的个人往往会在真实性和包容性之间陷入两难境地,原因就在于这些由同质性驱动的动力:如果他们披露自己的真正兴趣,就有可能被排斥在更广泛的对话之外。相反,为了获得包容性,他们可能会感到被同化的压力。在社交媒体平台上,不同的会话语境经常会发生碰撞,而这些平台的核心推荐算法可以根据网络结构和历史用户参与情况来确定内容的优先级,那么社交媒体平台的性质和设计会如何影响这些动态呢?在本文中,我们采用了基于代理的模拟来研究这个问题。我们的研究结果表明,少数群体产生的专业内容的可见度在下降,随着时间的推移,推荐算法加剧了这一趋势。在少数群体社区中,与多数群体非常相似的用户往往会获得更高的可见度。我们探讨了研究结果的哲学和设计意义,讨论了它们与信息公正、包容性和多样性的认识论益处等问题的相关性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Authenticity and exclusion: social media recommendation algorithms and the dynamics of belonging in professional networks
Homophily - the attraction of similarity - profoundly influences social interactions, affecting associations, information disclosure, and the dynamics of social exchanges. Organizational studies reveal that when professional and personal boundaries overlap, individuals from minority backgrounds often encounter a dilemma between authenticity and inclusion due to these homophily-driven dynamics: if they disclose their genuine interests, they risk exclusion from the broader conversation. Conversely, to gain inclusion, they might feel pressured to assimilate. How might the nature and design of social media platforms, where different conversational contexts frequently collapse, and the recommender algorithms that are at the heart of these platforms, which can prioritize content based on network structure and historical user engagement, impact these dynamics? In this paper, we employ agent-based simulations to investigate this question. Our findings indicate a decline in the visibility of professional content generated by minority groups, a trend that is exacerbated over time by recommendation algorithms. Within these minority communities, users who closely resemble the majority group tend to receive greater visibility. We examine the philosophical and design implications of our results, discussing their relevance to questions of informational justice, inclusion, and the epistemic benefits of diversity.
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