Machine Unlearning of Federated Clusters
Chao Pan, Jin Sima, Saurav Prakash, Vishal Rana, Olgica Milenkovic

TL;DR
This paper introduces a novel machine unlearning method for federated clustering, enabling efficient removal of data while maintaining clustering performance and significantly reducing retraining time.
Contribution
It proposes the first unlearning mechanism for federated clustering, utilizing a secure framework with specialized initialization and communication-efficient protocols.
Findings
Superior clustering performance with imbalanced clusters
84x speed-up over complete retraining methods
Effective privacy-preserving unlearning in federated settings
Abstract
Federated clustering (FC) is an unsupervised learning problem that arises in a number of practical applications, including personalized recommender and healthcare systems. With the adoption of recent laws ensuring the "right to be forgotten", the problem of machine unlearning for FC methods has become of significant importance. We introduce, for the first time, the problem of machine unlearning for FC, and propose an efficient unlearning mechanism for a customized secure FC framework. Our FC framework utilizes special initialization procedures that we show are well-suited for unlearning. To protect client data privacy, we develop the secure compressed multiset aggregation (SCMA) framework that addresses sparse secure federated learning (FL) problems encountered during clustering as well as more general problems. To simultaneously facilitate low communication complexity and secret…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data
