FAIRY:一个理解用户行为和他们的社交动态之间关系的框架

Azin Ghazimatin, Rishiraj Saha Roy, G. Weikum
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引用次数: 10

摘要

用户越来越依赖社交媒体来获取日常信息。feed中的项目,如新闻、问题、歌曲等,通常是用户的社交关系、兴趣和在平台上的行为的复杂相互作用的结果。用户自己的行为和收到的feed之间的关系经常令人困惑,许多用户希望对为什么某些项目显示给他们有一个明确的解释。透明度和可解释性是认知超载、过滤气泡、用户跟踪和隐私风险的现代世界的关键问题。本文介绍了FAIRY,这是一个框架,可以系统地发现、排序和解释用户的行为和他们的社交媒体提要中的项目之间的关系。我们将用户在平台上的本地邻居建模为交互图,交互图是一种异构信息网络的形式,仅由相关用户易于访问的信息构建。我们假设连接用户和她的提要项目的交互图中的路径可以作为对用户的相关解释。这些路径通过一个学习排名模型进行评分,该模型捕捉到相关性和惊喜性。在两个社交平台上的用户研究证明了FAIRY方法的实际可行性和用户效益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FAIRY: A Framework for Understanding Relationships Between Users' Actions and their Social Feeds
Users increasingly rely on social media feeds for consuming daily information. The items in a feed, such as news, questions, songs, etc., usually result from the complex interplay of a user's social contacts, her interests and her actions on the platform. The relationship of the user's own behavior and the received feed is often puzzling, and many users would like to have a clear explanation on why certain items were shown to them. Transparency and explainability are key concerns in the modern world of cognitive overload, filter bubbles, user tracking, and privacy risks. This paper presents FAIRY, a framework that systematically discovers, ranks, and explains relationships between users' actions and items in their social media feeds. We model the user's local neighborhood on the platform as an interaction graph, a form of heterogeneous information network constructed solely from information that is easily accessible to the concerned user. We posit that paths in this interaction graph connecting the user and her feed items can act as pertinent explanations for the user. These paths are scored with a learning-to-rank model that captures relevance and surprisal. User studies on two social platforms demonstrate the practical viability and user benefits of the FAIRY method.
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