Federated recommender systems have distinct advantages in terms of privacy protection over traditional recommender systems that are centralized at a data center. However, previous work on federated recommender systems does not fully consider the limitations of storage, RAM, energy and communication bandwidth in a mobile environment. The scales of the models proposed are too large to be easily run on mobile devices. And existing federated recommender systems need to fine-tune recommendation models on each device, making it hard to effectively exploit collaborative filtering information among users/devices. Our goal in this paper is to design a novel federated learning framework for rating prediction (RP) for mobile environments. We introduce a federated matrix factorization (MF) framework, named meta matrix factorization (MetaMF). Given a user, we first obtain a collaborative vector by collecting useful information with a collaborative memory module. Then, we employ a meta recommender module to generate private item embeddings and a RP model based on the collaborative vector in the server. To address the challenge of generating a large number of high-dimensional item embeddings, we devise a rise-dimensional generation strategy that first generates a low-dimensional item embedding matrix and a rise-dimensional matrix, and then multiply them to obtain high-dimensional embeddings. We use the generated model to produce private RPs for the given user on her device. MetaMF shows a high capacity even with a small RP model, which can adapt to the limitations of a mobile environment. We conduct extensive experiments on four benchmark datasets to compare MetaMF with existing MF methods and find that MetaMF can achieve competitive performance. Moreover, we find MetaMF achieves higher RP performance over existing federated methods by better exploiting collaborative filtering among users/devices.
翻译:联邦推荐人系统在保护隐私方面与数据中心集中的传统推荐人系统相比,具有明显的优势。然而,以前关于联邦推荐人系统的工作并未充分考虑到移动环境中存储、内存、能源和通信带宽的局限性。拟议模型的规模太大,无法轻易在移动设备上运行。现有的联邦推荐人系统需要微调每个设备上的建议模型,从而难以有效利用用户/构件之间的协作过滤信息。我们本文件的目标是设计一个新的联邦化学习框架,用于对移动环境进行评级预测(RP)。我们引入了一个联邦化矩阵化框架,称为元矩阵因子化。鉴于用户,我们首先通过收集有用的信息来获得协作性向移动设备运行。然后,我们使用一个元性建议模块来生成每个设备上的私人物品嵌入和基于服务器中协作性矢量的RP模型。为了应对产生大量高度嵌入式项目的挑战,我们设计了一个升级的基质化矩阵化矩阵框架框架框架框架框架框架框架框架框架框架框架,即称为元化矩阵化矩阵化矩阵化的矩阵化矩阵化模型,首先通过一个高维基化的模型来生成一个高维基质化的模型,然后我们获取高维基化的模型。</s>