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Autores principales: Yuan, Haochen, Zhang, Yang, He, Xiang, Sheng, Quan Z., Wang, Zhongjie
Formato: Preprint
Publicado: 2025
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Acceso en línea:https://arxiv.org/abs/2512.13734
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author Yuan, Haochen
Zhang, Yang
He, Xiang
Sheng, Quan Z.
Wang, Zhongjie
author_facet Yuan, Haochen
Zhang, Yang
He, Xiang
Sheng, Quan Z.
Wang, Zhongjie
contents With the rise of cloud-edge collaboration, recommendation services are increasingly trained in distributed environments. Federated Recommendation (FR) enables such multi-end collaborative training while preserving privacy by sharing model parameters instead of raw data. However, the large number of parameters, primarily due to the massive item embeddings, significantly hampers communication efficiency. While existing studies mainly focus on improving the efficiency of FR models, they largely overlook the issue of embedding parameter overhead. To address this gap, we propose a FR training framework with Parameter-Efficient Fine-Tuning (PEFT) based embedding designed to reduce the volume of embedding parameters that need to be transmitted. Our approach offers a lightweight, plugin-style solution that can be seamlessly integrated into existing FR methods. In addition to incorporating common PEFT techniques such as LoRA and Hash-based encoding, we explore the use of Residual Quantized Variational Autoencoders (RQ-VAE) as a novel PEFT strategy within our framework. Extensive experiments across various FR model backbones and datasets demonstrate that our framework significantly reduces communication overhead while improving accuracy. The source code is available at https://github.com/young1010/FedPEFT.
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spellingShingle Plug-and-Play Parameter-Efficient Tuning of Embeddings for Federated Recommendation
Yuan, Haochen
Zhang, Yang
He, Xiang
Sheng, Quan Z.
Wang, Zhongjie
Machine Learning
Artificial Intelligence
With the rise of cloud-edge collaboration, recommendation services are increasingly trained in distributed environments. Federated Recommendation (FR) enables such multi-end collaborative training while preserving privacy by sharing model parameters instead of raw data. However, the large number of parameters, primarily due to the massive item embeddings, significantly hampers communication efficiency. While existing studies mainly focus on improving the efficiency of FR models, they largely overlook the issue of embedding parameter overhead. To address this gap, we propose a FR training framework with Parameter-Efficient Fine-Tuning (PEFT) based embedding designed to reduce the volume of embedding parameters that need to be transmitted. Our approach offers a lightweight, plugin-style solution that can be seamlessly integrated into existing FR methods. In addition to incorporating common PEFT techniques such as LoRA and Hash-based encoding, we explore the use of Residual Quantized Variational Autoencoders (RQ-VAE) as a novel PEFT strategy within our framework. Extensive experiments across various FR model backbones and datasets demonstrate that our framework significantly reduces communication overhead while improving accuracy. The source code is available at https://github.com/young1010/FedPEFT.
title Plug-and-Play Parameter-Efficient Tuning of Embeddings for Federated Recommendation
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2512.13734