Recommendation services are extensively adopted in several user-centered applications as a tool to alleviate the information overload problem and help users in orienteering in a vast space of possible choices. In such scenarios, data ownership is a crucial concern since users may not be willing to share their sensitive preferences (e.g., visited locations) with a central server. Unfortunately, data harvesting and collection is at the basis of modern, state-of-the-art approaches to recommendation. To address this issue, we present FPL, an architecture in which users collaborate in training a central factorization model while controlling the amount of sensitive data leaving their devices. The proposed approach implements pair-wise learning-to-rank optimization by following the Federated Learning principles, originally conceived to mitigate the privacy risks of traditional machine learning. The public implementation is available at https://split.to/sisinflab-fpl.
翻译:在若干以用户为中心的应用中广泛采用建议服务,作为缓解信息超载问题和帮助用户在可能的选择的广阔空间中选择方向的工具,在这种情况下,数据所有权是一个关键问题,因为用户可能不愿意与中央服务器分享其敏感偏好(例如访问地点),不幸的是,数据收集和收集是现代最新的建议方法的基础。为解决这一问题,我们介绍了FPL, 用户在其中合作培训中央因素化模型,同时控制离开其装置的敏感数据的数量。拟议方法采用双向至级优化,遵循联邦学习原则,最初设想该原则的目的是减轻传统机器学习的隐私风险。公共实施可在https://split.to/sisinflab-fpl查阅。