Litcius/Paper detail

Beyond Fine-Tuning: Efficient and Effective Fed-Tuning for Mobile/Web Users

Bingyan Liu, Yifeng Cai, Hongzhe Bi, Ziqi Zhang, Ding Li, Yao Guo, Xiangqun Chen

202312 citationsDOI

Abstract

Fine-tuning is a typical mechanism to achieve model adaptation for mobile/web users, where a model trained by the cloud is further retrained to fit the target user task. While traditional fine-tuning has been proved effective, it only utilizes local data to achieve adaptation, failing to take advantage of the valuable knowledge from other mobile/web users. In this paper, we attempt to extend the local-user fine-tuning to multi-user fed-tuning with the help of Federated Learning (FL). Following the new paradigm, we propose EEFT, a framework aiming to achieve Efficient and Effective Fed-Tuning for mobile/web users. The key idea is to introduce lightweight but effective adaptation modules to the pre-trained model, such that we can freeze the pre-trained model and just focus on optimizing the modules to achieve cost reduction and selective task cooperation. Extensive experiments on our constructed benchmark demonstrate the effectiveness and efficiency of the proposed framework.

Topics & Concepts

Computer scienceBenchmark (surveying)Adaptation (eye)Key (lock)Task (project management)Focus (optics)Mobile deviceCloud computingDistributed computingHuman–computer interactionWorld Wide WebOperating systemEngineeringGeodesyOpticsPhysicsSystems engineeringGeographyPrivacy-Preserving Technologies in DataCaching and Content DeliveryHuman Mobility and Location-Based Analysis