LGCRDCMLJun 12, 2020

Backdoor Attacks on Federated Meta-Learning

arXiv:2006.07026v233 citations
AI Analysis

This addresses security risks in privacy-preserving collaborative learning systems, but the defense is incremental as it builds on existing matching network ideas.

The paper tackles the vulnerability of federated meta-learning to backdoor attacks, finding that even 1-shot attacks can be highly successful and persistent, and proposes a defense mechanism using matching networks that reduces attack success and persistence.

Federated learning allows multiple users to collaboratively train a shared classification model while preserving data privacy. This approach, where model updates are aggregated by a central server, was shown to be vulnerable to poisoning backdoor attacks: a malicious user can alter the shared model to arbitrarily classify specific inputs from a given class. In this paper, we analyze the effects of backdoor attacks on federated meta-learning, where users train a model that can be adapted to different sets of output classes using only a few examples. While the ability to adapt could, in principle, make federated learning frameworks more robust to backdoor attacks (when new training examples are benign), we find that even 1-shot~attacks can be very successful and persist after additional training. To address these vulnerabilities, we propose a defense mechanism inspired by matching networks, where the class of an input is predicted from the similarity of its features with a support set of labeled examples. By removing the decision logic from the model shared with the federation, success and persistence of backdoor attacks are greatly reduced.

Foundations

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