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The Price of Privacy in Untrusted Recommender Systems

机译:不可信推荐系统中的隐私价格

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摘要

Recent increase in online privacy concerns prompts the following question: can a recommender system be accurate if users do not entrust it with their private data? To answer this, we study the problem of learning item-clusters under local differential privacy, a powerful, formal notion of data privacy. We develop bounds on the sample-complexity of learning item-clusters from privatized user inputs. Significantly, our results identify a sample-complexity separation between learning in an information-rich and an information-scarce regime, thereby highlighting the interaction between privacy and the amount of information (ratings) available to each user. In the information-rich regime, where each user rates at least a constant fraction of items, a spectral clustering approach is shown to achieve a sample-complexity lower bound derived from a simple information-theoretic argument based on Fano's inequality. However, the information-scarce regime, where each user rates only a vanishing fraction of items, is found to require a fundamentally different approach both for lower bounds and algorithms. To this end, we develop new techniques for bounding mutual information under a notion of channel-mismatch. These techniques may be of broader interest, and we illustrate this by applying them to (i) learning based on 1-bit sketches, and (ii) adaptive learning. Finally, we propose a new algorithm, MaxSense, and show that it achieves optimal sample-complexity in the information-scarce regime.
机译:在线隐私问题的最新发展提示了以下问题:如果用户不将其推荐给私人数据,推荐系统是否准确?为了回答这个问题,我们研究了在局部差分隐私(一种强大的,正式的数据隐私概念)下学习项目集群的问题。我们从私有化的用户输入中为学习项目群的样本复杂度确定了界限。重要的是,我们的研究结果确定了在信息丰富和信息稀缺的制度下学习之间的样本复杂性分离,从而突显了隐私和每个用户可用的信息量(等级)之间的相互作用。在每个用户都对至少恒定比例的项目进行评分的信息丰富的体制中,频谱聚类方法显示出从基于Fano不等式的简单信息理论论证得出的样本复杂度下界。但是,对于每个用户仅对物品消失的部分进行评分的信息稀缺机制,对于下限和算法,都需要一种根本不同的方法。为此,我们开发了在信道不匹配的概念下限制相互信息的新技术。这些技术可能引起广泛的兴趣,我们通过将其应用于(i)基于1位草图的学习和(ii)自适应学习来说明这一点。最后,我们提出了一种新算法MaxSense,并证明它在信息稀缺的情况下实现了最佳的样本复杂度。

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