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Privacy Preserving Point-of-Interest Recommendation Using Decentralized Matrix Factorization

机译:使用分散的矩阵分解保护隐私权建议

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Points of interest (POI) recommendation has been drawn much attention recently due to the increasing popularity of location-based networks, e.g., Foursquare and Yelp. Among the existing approaches to POI recommendation, Matrix Factorization (MF) based techniques have proven to be effective. However, existing MF approaches suffer from two major problems: (1) Expensive computations and storages due to the centralized model training mechanism: the centralized learners have to maintain the whole user-item rating matrix. and potentially huge low rank matrices. (2) Privacy issues: the users' preferences are at risk of leaking to malicious attackers via the centralized learner. To solve these, we present a Decentralized MF (DMF) framework for POI recommendation. Specifically, instead of maintaining all the low rank matrices and sensitive rating data for training, we propose a random walk based decentralized training technique to train MF models on each user's end, e.g., cell phone and Pad. By doing so, the ratings of each user are still kept on one's own hand, and moreover, decentralized learning can be taken as distributed learning with multi-learners (users), and thus alleviates the computation and storage issue. Experimental results on two real-world datasets demonstrate that, comparing with the classic and state-of-the-art latent factor models, DMF significantly improvements the recommendation performance in terms of precision and recall.
机译:由于基于位置的网络的普及日益普及,例如,Foursquare和Yelp,最近,兴趣点(POI)推荐最近受到了很大的关注。在POI推荐的现有方法中,基于基于矩阵分解(MF)的技术已经证明是有效的。然而,现有的MF方法遭受了两个主要问题:(1)由于集中式培训机制,昂贵的计算和存储:集中式学习者必须维护整个用户项目评级矩阵。潜在巨大的低级矩阵。 (2)隐私问题:用户的偏好是通过集中学习者泄露对恶意攻击者的风险。要解决这些问题,我们为POI推荐提供了分散的MF(DMF)框架。具体而言,除了维护所有低级矩阵和用于训练的敏感评级数据,我们提出了一种基于随机的分散训练技术,用于在每个用户端,例如手机和垫上训练MF模型。通过这样做,每个用户的额定额仍然保持在自己的手上,而且,可以将分散的学习与多学习者(用户)一起被视为分布式学习,从而减轻了计算和存储问题。两个现实世界数据集的实验结果表明,与经典和最先进的潜在因子模型相比,DMF在精确和召回方面显着提高了推荐性能。

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