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Auteurs principaux: Wang, Ruhan, Wang, Zhiyong, Huang, Chengkai, Wang, Rui, Yu, Tong, Yao, Lina, Lui, John C. S., Zhou, Dongruo
Format: Preprint
Publié: 2025
Sujets:
Accès en ligne:https://arxiv.org/abs/2506.07440
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author Wang, Ruhan
Wang, Zhiyong
Huang, Chengkai
Wang, Rui
Yu, Tong
Yao, Lina
Lui, John C. S.
Zhou, Dongruo
author_facet Wang, Ruhan
Wang, Zhiyong
Huang, Chengkai
Wang, Rui
Yu, Tong
Yao, Lina
Lui, John C. S.
Zhou, Dongruo
contents For question-answering (QA) tasks, in-context learning (ICL) enables language models to generate responses without modifying their parameters by leveraging examples provided in the input. However, the effectiveness of ICL heavily depends on the availability of high-quality examples, which are often scarce due to data privacy constraints, annotation costs, and distribution disparities. A natural solution is to utilize examples stored on client devices, but existing approaches either require transmitting model parameters - incurring significant communication overhead - or fail to fully exploit local datasets, limiting their effectiveness. To address these challenges, we propose Federated In-Context Learning (Fed-ICL), a general framework that enhances ICL through an iterative, collaborative process. Fed-ICL progressively refines responses by leveraging multi-round interactions between clients and a central server, improving answer quality without the need to transmit model parameters. We establish theoretical guarantees for the convergence of Fed-ICL and conduct extensive experiments on standard QA benchmarks, demonstrating that our proposed approach achieves strong performance while maintaining low communication costs.
format Preprint
id arxiv_https___arxiv_org_abs_2506_07440
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Federated In-Context Learning: Iterative Refinement for Improved Answer Quality
Wang, Ruhan
Wang, Zhiyong
Huang, Chengkai
Wang, Rui
Yu, Tong
Yao, Lina
Lui, John C. S.
Zhou, Dongruo
Machine Learning
For question-answering (QA) tasks, in-context learning (ICL) enables language models to generate responses without modifying their parameters by leveraging examples provided in the input. However, the effectiveness of ICL heavily depends on the availability of high-quality examples, which are often scarce due to data privacy constraints, annotation costs, and distribution disparities. A natural solution is to utilize examples stored on client devices, but existing approaches either require transmitting model parameters - incurring significant communication overhead - or fail to fully exploit local datasets, limiting their effectiveness. To address these challenges, we propose Federated In-Context Learning (Fed-ICL), a general framework that enhances ICL through an iterative, collaborative process. Fed-ICL progressively refines responses by leveraging multi-round interactions between clients and a central server, improving answer quality without the need to transmit model parameters. We establish theoretical guarantees for the convergence of Fed-ICL and conduct extensive experiments on standard QA benchmarks, demonstrating that our proposed approach achieves strong performance while maintaining low communication costs.
title Federated In-Context Learning: Iterative Refinement for Improved Answer Quality
topic Machine Learning
url https://arxiv.org/abs/2506.07440