LGDCSep 12, 2025

FedBiF: Communication-Efficient Federated Learning via Bits Freezing

arXiv:2509.10161v11 citationsh-index: 22Has CodeIEEE Transactions on Parallel and Distributed Systems
Originality Highly original
AI Analysis

This addresses communication efficiency for federated learning systems, offering a novel method that reduces overhead while maintaining accuracy, though it is incremental in the context of existing quantization approaches.

The paper tackles the communication overhead problem in federated learning by proposing FedBiF, a framework that learns quantized model parameters during local training, achieving accuracy comparable to FedAvg with only 1 bit-per-parameter for uplink and 3 bpp for downlink communication.

Federated learning (FL) is an emerging distributed machine learning paradigm that enables collaborative model training without sharing local data. Despite its advantages, FL suffers from substantial communication overhead, which can affect training efficiency. Recent efforts have mitigated this issue by quantizing model updates to reduce communication costs. However, most existing methods apply quantization only after local training, introducing quantization errors into the trained parameters and potentially degrading model accuracy. In this paper, we propose Federated Bit Freezing (FedBiF), a novel FL framework that directly learns quantized model parameters during local training. In each communication round, the server first quantizes the model parameters and transmits them to the clients. FedBiF then allows each client to update only a single bit of the multi-bit parameter representation, freezing the remaining bits. This bit-by-bit update strategy reduces each parameter update to one bit while maintaining high precision in parameter representation. Extensive experiments are conducted on five widely used datasets under both IID and Non-IID settings. The results demonstrate that FedBiF not only achieves superior communication compression but also promotes sparsity in the resulting models. Notably, FedBiF attains accuracy comparable to FedAvg, even when using only 1 bit-per-parameter (bpp) for uplink and 3 bpp for downlink communication. The code is available at https://github.com/Leopold1423/fedbif-tpds25.

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