Privacy-preserving Collaborative Filtering for the Cloud

A. Basu, Jaideep Vaidya, H. Kikuchi, T. Dimitrakos
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引用次数: 21

Abstract

Rating-based collaborative filtering (CF) enables the prediction of the rating that a user will give to an item, based on the ratings of other items given by other users. However, doing this while preserving the privacy of rating data from individual users is a significant challenge. Several privacy preserving schemes have, so far been proposed in prior work. However, while these schemes are theoretically feasible, there are many practical implementation difficulties on real world public cloud computing platforms. In this paper, we approach the generalised problem of privacy preserving collaborative filtering from the cloud perspective and propose an efficient and secure approach that is built for the cloud. We present our implementation experiences and experimental results based on the Google App Engine for Java (GAE/J) cloud platform.
保护隐私的云协同过滤
基于评级的协同过滤(CF)能够根据其他用户给出的其他项目的评级,预测用户将对某个项目给出的评级。然而,在保持个人用户评级数据隐私的同时做到这一点是一项重大挑战。到目前为止,在先前的工作中已经提出了几种隐私保护方案。然而,虽然这些方案在理论上是可行的,但在现实世界的公共云计算平台上存在许多实际实施困难。在本文中,我们从云的角度探讨了隐私保护协同过滤的一般问题,并提出了一种针对云构建的高效安全的方法。介绍了基于b谷歌应用程序引擎的Java (GAE/J)云平台的实现经验和实验结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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