Exploiting Shared Representations for Personalized Federated Learning

计算机科学 特征学习 机器学习 联合学习 人工智能 代表(政治) 外部数据表示 多样性(控制论) 直觉 深度学习 样本复杂性 理论计算机科学 政治 认识论 政治学 哲学 法学
作者
Liam Collins,Hamed Hassani,Aryan Mokhtari,Sanjay Shakkottai
出处
期刊:Cornell University - arXiv [Cornell University]
卷期号:: 2089-2099 被引量:69
标识
DOI:10.48550/arxiv.2102.07078
摘要

Deep neural networks have shown the ability to extract universal feature representations from data such as images and text that have been useful for a variety of learning tasks. However, the fruits of representation learning have yet to be fully-realized in federated settings. Although data in federated settings is often non-i.i.d. across clients, the success of centralized deep learning suggests that data often shares a global feature representation, while the statistical heterogeneity across clients or tasks is concentrated in the labels. Based on this intuition, we propose a novel federated learning framework and algorithm for learning a shared data representation across clients and unique local heads for each client. Our algorithm harnesses the distributed computational power across clients to perform many local-updates with respect to the low-dimensional local parameters for every update of the representation. We prove that this method obtains linear convergence to the ground-truth representation with near-optimal sample complexity in a linear setting, demonstrating that it can efficiently reduce the problem dimension for each client. This result is of interest beyond federated learning to a broad class of problems in which we aim to learn a shared low-dimensional representation among data distributions, for example in meta-learning and multi-task learning. Further, extensive experimental results show the empirical improvement of our method over alternative personalized federated learning approaches in federated environments with heterogeneous data.
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