P3MCF:实用的隐私保护多域协同过滤

Toru Nakamura, S. Kiyomoto, R. Watanabe, Yutaka Miyake
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引用次数: 5

摘要

针对面向用户的推荐,提出了一种高效的隐私保护、多域协同过滤方案P3MCF。P3MCF为多域推荐系统实现了轻量级、高精度的推荐。在P3MCF中,数据提供者仅将用户评分的统计值传递给推荐者,以提高推荐的准确性。P3MCF只需要为每个数据提供者传输O(m)个统计值,其中m为每个用户记录中的项数。我们实现了一个原型系统,并评估了交易时间和推荐的准确性。实验证明,使用统计值可以提高精度。结果还证实,如果我们使用评级数量为100,000的公共数据集,预测缺失值的计算时间约为21毫秒。实验结果表明,从准确率和交易时间的角度来看,P3MCF具有足够的实用性。我们还确认了P3MCF适用于多个服务模型,例如水平分区模型和垂直分区模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
P3MCF: Practical Privacy-Preserving Multi-domain Collaborative Filtering
This paper proposes P3MCF, an efficient privacy-preserving, multi-domain collaborative filtering scheme for user oriented recommendations. P3MCF achieves a lightweight, high accuracy recommendation for a multi-domain recommendation system. In P3MCF, a data supplier transfers only statistical values on user ratings to recommenders in order to improve the accuracy of recommendations. P3MCF only requires transmission of O(m) statistical values for each data supplier, where m is the number of items in each user record. We implemented a prototype system and evaluated transaction time and accuracy of recommendations. Experiments confirmed that accuracy could be improved when using statistical values. The results also confirmed that the computation time for predicting a missing value was about 21 milliseconds if we use a public dataset where the number of ratings is 100,000. The experimental results demonstrated that P3MCF was sufficiently practical from the viewpoint of accuracy and transaction time. We also confirmed that P3MCF was applicable to several service models, such as a horizontally partitioned model and a vertically partitioned model.
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