Enabling Communication-efficient and Robust Federated Learning over Packet Lossy Networks via Random Interleaved Vector Quantization

Published: 2025, Last Modified: 08 Feb 2026ICME 2025EveryoneRevisionsBibTeXCC BY-SA 4.0
Abstract: In packet erasure networks, federated learning (FL) typically suffers more prohibitive communication overhead from massive retransmissions of high-dimensional gradients. As a result, recent studies are dedicated to developing retransmission-free gradient compression techniques with erasure resilience. Nonetheless, two limitations remain unsolved: existing works neither explore why packet erasure degrades the performance of FL nor exploit the spatial correlations among gradient entries for better compression. In this paper, we investigate FL performance degradation via analyzing model updating deviation and find that the deviation is exacerbated by dependencies among lost gradient entries. On top of this observation, we propose FedRIVQ, a communication-efficient and robust FL framework taking a customized compressor termed random interleaved vector quantization (VQ). FedRIVQ leverages the spatial correlations among gradient entries with VQ and randomly interleaves these entries prior to VQ to eliminate their dependencies. These innovations allow all gradient entries to share an identical erasure probability, thereby packet erasure is equivalent to random erasure, which significantly improves both communication efficiency and the robustness of FL. Theoretical analysis and experimental results consistently demonstrate the effectiveness of our designs.
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