Developing Self-Advocacy Skills through Machine Learning Education: The Case of Ad Recommendation on Facebook

Yim Register, Emma S. Spiro
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引用次数: 1

Abstract

Facebook users interact with algorithms every day. These algorithms can perpetuate harm via incongruent targeted ads, echo chambers, or "rabbit hole" recommendations. Education around the machine learning (ML) behind Facebook (FB) can help users to point out algorithmic bias and harm, and advocate for themselves effectively when things go wrong. One algorithm that FB users interact with regularly is User-Based Collaborative Filtering (UB-CF) which provides the basis for ad recommendation. We contribute a novel research approach for teaching users about a commonly used algorithm in machine learning in real-world context -- an instructive web application using real examples built from the user's own FB data on ad interests. The instruction also prompts users to reflect on their interactions with ML systems, specifically Facebook. In a between-subjects design, we tested both Data Science Novices and Experts on the efficacy of the UB-CF instruction. Taking care to highlight the voices of marginalized users, we use the application as a prompt for surfacing potential harms perpetuated by FB ad recommendations, and qualitatively analyze themes of harm and proposed solutions provided by users themselves. The instruction increased comprehension of UB-CF for both groups, and we show that comprehension is associated with mentioning the mechanisms of the algorithm more in advocacy statements, a crucial component of a successful argument. We provide recommendations for increased algorithmic transparency on social media and for including marginalized voices in the conversation of algorithmic harm that are of interest both to social media researchers and ML educators.
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通过机器学习教育培养自我宣传技能:Facebook广告推荐案例
Facebook用户每天都与算法互动。这些算法可能会通过不一致的定向广告、回音室或“兔子洞”推荐来造成伤害。Facebook背后的机器学习(ML)教育可以帮助用户指出算法的偏见和危害,并在出现问题时有效地为自己辩护。facebook用户经常使用的一种算法是基于用户的协同过滤(UB-CF),它为广告推荐提供了基础。我们提供了一种新颖的研究方法,用于在现实环境中向用户教授机器学习中常用的算法——一个使用用户自己的广告兴趣FB数据构建的真实示例的指导性web应用程序。该指令还提示用户反思他们与机器学习系统的互动,特别是Facebook。在受试者间设计中,我们测试了数据科学新手和专家对UB-CF教学的有效性。为了突出边缘化用户的声音,我们使用该应用程序作为提示,揭示FB广告推荐带来的潜在危害,并定性分析危害主题和用户自己提供的解决方案。该指令提高了两组对UB-CF的理解,我们表明,理解与在倡导声明中更多地提及算法的机制有关,这是成功论证的关键组成部分。我们为提高社交媒体上的算法透明度提供建议,并在社交媒体研究人员和机器学习教育者都感兴趣的算法危害对话中纳入边缘化的声音。
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