协同滤波的联邦变分自编码器

Mirko Palato
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引用次数: 7

摘要

推荐系统(RSs)是一种有价值的技术,可以帮助用户做出决策。通常,RSs的设计假定中央服务器存储和管理历史用户行为。然而,如今用户对隐私问题的意识越来越强,对隐私保护技术的需求也越来越高。为了解决这个问题,联邦学习(FL)范式可以在不损害用户隐私的情况下提供良好的性能。近年来,人们致力于将标准的协同过滤方法(例如,矩阵分解)应用到FL框架中。在本文中,我们提出了一种用于协同滤波的联邦变分自编码器(federalvariationautoencoder, federalvariationautoencoder),它扩展了当前最先进的多分自编码器模型。此外,我们提出了一个自适应学习率计划来加速学习。我们还讨论了FedVAE潜在的隐私保护能力。在5个基准数据集上的广泛实验评估表明,我们的提议可以在合理的迭代次数下获得接近multiae的性能。我们还通过实证证明,自适应学习率既保证了学习的加速,又保证了良好的稳定性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Federated Variational Autoencoder for Collaborative Filtering
Recommender Systems (RSs) are valuable technologies that help users in their decision-making process. Generally, RSs are designed with the assumption that a central server stores and manages historical users' behaviors. However, users are nowadays more aware of privacy issues leading to a higher demand for privacy-preserving technologies. To cope with this issue, the Federated Learning (FL) paradigm can provide good performance without harming the users' privacy. Some efforts have been devoted to adapt standard collaborative filtering methods (e.g., matrix factorization) into the FL framework in recent years. In this paper, we present a Federated Variational Autoencoder for Collaborative Filtering (FedVAE), which extends the state-of-the-art MultVAE model. Additionally, we propose an adaptive learning rate schedule to accelerate learning. We also discuss the potential privacy-preserving capabilities of FedVAE. An extensive experimental evaluation on five benchmark data sets shows that our proposal can achieve performance close to MultVAE in a reasonable number of iterations. We also empirically demonstrate that the adaptive learning rate guarantees both accelerated learning and good stability.
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