The physical environment you navigate strongly determines which communities and people matter most to individuals. These effects drive both personal access to opportunities and the social capital of communities, and can often be observed in the personal mobility traces of individuals. Traditional social media feeds underutilize these mobility-based features, or do so in a privacy exploitative manner. Here we propose a consent-first private information sharing paradigm for driving social feeds from users' personal private data, specifically using mobility traces. This approach designs the feed to explicitly optimize for integrating the user into the local community and for social capital building through leveraging mobility trace overlaps as a proxy for existing or potential real-world social connections, creating proportionality between whom a user sees in their feed, and whom the user is likely to see in person. These claims are validated against existing social-mobility data, and a reference implementation of the proposed algorithm is built for demonstration. In total, this work presents a novel technique for designing feeds that represent real offline social connections through private set intersections requiring no third party, or public data exposure.
翻译:您所浏览的物理环境有力地决定了哪些社区和人对个人最为重要。 这些效应既驱使个人获得机会,也驱使社区的社会资本,而且往往可以在个人的个人流动痕迹中观察到。传统的社会媒体不充分利用这些基于流动性的特点,或者以剥削隐私的方式利用这些特征。在这里,我们提议了一种同意-首先的私人信息共享模式,用于从用户的个人私人数据中驱动社会饲料,特别是使用流动痕迹。这一方法设计了一种明确优化的供料,将用户融入当地社区和社会资本建设,方法是利用流动性的痕量重叠作为现有或潜在的现实世界社会联系的代用品,在用户在它们的供料中看到和使用者可能亲自看到的人之间建立相称性。这些主张根据现有的社会流动性数据得到验证,并建立了拟议算法的参考实施,以示范。总体而言,这项工作为设计饲料提供了一种新型技术,通过不需要第三方或公共数据曝光的私人点的交叉点,代表真正的离线社会联系。