Information-Theoretically Private Federated Submodel Learning with Storage Constrained Databases
Sajani Vithana, Sennur Ulukus

TL;DR
This paper develops privacy-preserving federated submodel learning schemes that efficiently utilize storage-constrained databases, minimizing communication costs while ensuring information-theoretic privacy of user updates.
Contribution
It introduces novel read-write and storage schemes tailored for storage-constrained databases in federated submodel learning, ensuring privacy and efficiency.
Findings
Proposed private read-write schemes for heterogeneous storage.
Achieved minimized communication costs under privacy constraints.
Validated schemes for both homogeneous and heterogeneous storage scenarios.
Abstract
In federated submodel learning (FSL), a machine learning model is divided into multiple submodels based on different types of data used for training. Each user involved in the training process only downloads and updates the submodel relevant to the user's local data, which significantly reduces the communication cost compared to classical federated learning (FL). However, the index of the submodel updated by the user and the values of the updates reveal information about the user's private data. In order to guarantee information-theoretic privacy in FSL, the model is stored at multiple non-colluding databases, and the user sends queries and updates to each database in such a way that no information is revealed on the updating submodel index or the values of the updates. In this work, we consider the practical scenario where the multiple non-colluding databases are allowed to have…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Stochastic Gradient Optimization Techniques
