私人智能助理

Shashank Jain, V. Tiwari, A. Balasubramanian, Niranjan Balasubramanian, Supriyo Chakraborty
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引用次数: 6

摘要

新闻推荐等个性化服务正在成为我们数字生活中不可或缺的一部分。问题在于,它们在隐私方面付出了高昂的代价。服务提供商收集和分析用户的个人数据以提供服务,但在此过程中可能会推断出用户的敏感信息。在这项工作中,我们提出了这样一个问题:“我们如何在不与提供商共享敏感数据的情况下提供个性化的新闻推荐?”我们提出了一个本地私人情报协助框架(PrIA),它收集用户数据,建立用户档案并提供建议,所有这些都在用户的个人设备上。它将聚合和个性化解耦:它使用云上现有的聚合服务来获取候选文章,但在本地进行个性化推荐。我们的概念验证实现和小规模用户研究表明了本地新闻推荐系统的可行性。在建立私人档案时,PrIA避免与基于云的推荐服务共享敏感信息。然而,与基于云的服务不同的是,PrIA不能利用大量用户的集体知识。我们通过比较PrIA和谷歌基于云的推荐服务来量化这种权衡。我们发现,PrIA推荐的平均精度仅比谷歌的服务低14%。与其在隐私或个性化之间做出选择,这个结果激发了对能够提供两者可接受的折衷的系统的进一步研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PrIA: A Private Intelligent Assistant
Personalized services such as news recommendations are becoming an integral part of our digital lives. The problem is that they extract a steep cost in terms of privacy. The service providers collect and analyze user's personal data to provide the service, but can infer sensitive information about the user in the process. In this work we ask the question "How can we provide personalized news recommendation without sharing sensitive data with the provider?" We propose a local private intelligence assistance framework (PrIA), which collects user data and builds a profile about the user and provides recommendations, all on the user's personal device. It decouples aggregation and personalization: it uses the existing aggregation services on the cloud to obtain candidate articles but makes the personalized recommendations locally. Our proof-of-concept implementation and small scale user study shows the feasibility of a local news recommendation system. In building a private profile, PrIA avoids sharing sensitive information with the cloud-based recommendation service. However, the trade-off is that unlike cloud-based services, PrIA cannot leverage collective knowledge from large number of users. We quantify this trade-off by comparing PrIA with Google's cloud-based recommendation service. We find that the average precision of PrIA's recommendation is only 14% lower than that of Google's service. Rather than choose between privacy or personalization, this result motivates further study of systems that can provide both with acceptable trade-offs.
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