Residential College | false |
Status | 已發表Published |
Efficient Federated Learning With Quality-Aware Generated Models: An Incentive Mechanism | |
Zhang, Hanwen1,2; Li, Peichun1,2; Dai, Minghui1,2; Wu, Yuan1,2,3; Qian, Liping4 | |
2024-09 | |
Source Publication | IEEE Internet of Things Journal |
ISSN | 2327-4662 |
Abstract | Federated learning (FL) encounters slow convergence due to data heterogeneity issues. Recently, generative artificial intelligence (AI) has showcased remarkable capabilities in synthesizing realistic data. To effectively address the challenges of non-independent and identically distributed (non-IID) data, this paper introduces a collaborative AI training framework that leverages generative AI to enhance the learning performance of FL. In this framework, heterogeneous edge devices (HEDs) identify specific data categories lacking in their local datasets and acquire these data from Generative AI Providers (GAPs). This strategy aims to improve the convergence rate of FL. However, HEDs and GAPs may be reluctant to contribute their resources to FL training due to self-interest. Therefore, an incentive mechanism is necessary to encourage their participation. We propose a reverse auction model to facilitate data transactions among FL training buyers, GAPs, and HEDs within the FL training buyer's budget. It focuses on determining winners and devising payment rules to maximize the FL training buyer's utility. This involves solving a 0-1 programming problem with two sellers (GAPs and HEDs). To tackle this, we use joint bidding and virtual seller pairs for analysis. We demonstrate that our method ensures truthfulness, individual rationality, and computational efficiency. Furthermore, we employ a one-side matching mechanism to approximate the optimal solution. We further investigate a strategy to analyze and allocate data based on variance, aiming to minimize non-IID issues in local data. Simulation results demonstrate that our proposed matching mechanism can effectively improve the computational efficiency, with the test accuracy differing from the theoretical optimum by only about 0.7%, and our mechanism can outperform the other greedy algorithms. Additionally, our data allocation strategy enhances the test accuracy by approximately 7% compared to existing methods. |
Keyword | Federated Learning Incentive Mechanism Generative Ai Data Compensation |
DOI | 10.1109/JIOT.2024.3461329 |
URL | View the original |
Language | 英語English |
Scopus ID | 2-s2.0-85204534924 |
Fulltext Access | |
Citation statistics | |
Document Type | Journal article |
Collection | Faculty of Science and Technology THE STATE KEY LABORATORY OF INTERNET OF THINGS FOR SMART CITY (UNIVERSITY OF MACAU) DEPARTMENT OF COMPUTER AND INFORMATION SCIENCE |
Corresponding Author | Wu, Yuan |
Affiliation | 1.University of Macau, State Key Laboratory of Internet of Things for Smart City, Macao 2.University of Macau, Department of Computer and Information Science, Macao 3.Zhuhai UM Science and Technology Research Institute, Zhuhai, 519031, China 4.Zhejiang University of Technology, College of Information Engineering, Hangzhou, 310023, China |
First Author Affilication | University of Macau |
Corresponding Author Affilication | University of Macau |
Recommended Citation GB/T 7714 | Zhang, Hanwen,Li, Peichun,Dai, Minghui,et al. Efficient Federated Learning With Quality-Aware Generated Models: An Incentive Mechanism[J]. IEEE Internet of Things Journal, 2024. |
APA | Zhang, Hanwen., Li, Peichun., Dai, Minghui., Wu, Yuan., & Qian, Liping (2024). Efficient Federated Learning With Quality-Aware Generated Models: An Incentive Mechanism. IEEE Internet of Things Journal. |
MLA | Zhang, Hanwen,et al."Efficient Federated Learning With Quality-Aware Generated Models: An Incentive Mechanism".IEEE Internet of Things Journal (2024). |
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