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Novel Collaborative Filtering Recommender Friendly to Privacy Protection

机译:新颖的合作过滤推荐人友好隐私保护

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Nowadays, recommender system is an indispensable tool in many information services, and a large number of algorithms have been designed and implemented. However, fed with very large datasets, state-of-the-art recommendation algorithms often face an efficiency bottleneck, i.e., it takes huge amount of computing resources to train a recommendation model. In order to satisfy the needs of privacy-savvy users who do not want to disclose their information to the service provider, the complexity of most existing solutions becomes prohibitive. As such, it is an interesting research question to design simple and efficient recommendation algorithms that achieve reasonable accuracy and facilitate privacy protection at the same time. In this paper, we propose an efficient recommendation algorithm, named CryptoRec, which has two nice properties: (1) can estimate a new user's preferences by directly using a model pre-learned from an expert dataset, and the new user's data is not required to train the model; (2) can compute recommendations with only addition and multiplication operations. As to the evaluation, we first test the recommendation accuracy on three real-world datasets and show that CryptoRec is competitive with state-of-the-art recommenders. Then, we evaluate the performance of the privacy-preserving variants of CryptoRec and show that predictions can be computed in seconds on a PC. In contrast, existing solutions will need tens or hundreds of hours on more powerful computers.
机译:如今,推荐系统是许多信息服务中不可或缺的工具,并且设计并实现了大量算法。然而,充满了非常大的数据集,最先进的推荐算法通常面临效率瓶颈,即,需要大量的计算资源来训练推荐模型。为了满足不想向服务提供商向服务提供商披露其信息的隐私 - 救护用户的需求,大多数现有解决方案的复杂性变得令人望而却步。因此,设计简单高效推荐算法,这是一个有趣的研究问题,可以同时实现合理的准确性和促进隐私保护。在本文中,我们提出了一个有效的推荐算法,命名的Cryptorec,其中有两个很好的属性:(1)可以通过直接使用从专家数据集预先学习的模型来估计新的用户的首选项,并且不需要新的用户数据训练模型; (2)可以使用加法和乘法操作计算建议。至于评估,我们首先在三个现实世界数据集中测试推荐准确性,并显示加密竞争与最先进的推荐人具有竞争力。然后,我们评估Cryptorec的隐私保留变体的性能,并表明可以在PC上以秒计算预测。相比之下,现有解决方案需要在更强大的计算机上需要数十或数百小时。

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