Data Assetization via Resources-decoupled Federated Learning
Jianzhe Zhao, Feida Zhu, Lingyan He, Zixin Tang, Mingce Gao, Shiyu, Yang, Guibing Guo

TL;DR
This paper introduces a resource-decoupled federated learning framework that optimizes collaboration among data owners, compute centers, and model owners, enhancing data utility while preserving privacy.
Contribution
It proposes a novel tripartite framework with a theoretical Stackelberg model and a dynamic algorithm to improve global utility in federated learning.
Findings
Maximized global utility through strategic participant linkage.
Effectively encouraged collaboration among all three parties.
Enhanced data asset value with dynamic quality evaluation.
Abstract
With the development of the digital economy, data is increasingly recognized as an essential resource for both work and life. However, due to privacy concerns, data owners tend to maximize the value of data through the circulation of information rather than direct data transfer. Federated learning (FL) provides an effective approach to collaborative training models while preserving privacy. However, as model parameters and training data grow, there are not only real differences in data resources between different data owners, but also mismatches between data and computing resources. These challenges lead to inadequate collaboration among data owners, compute centers, and model owners, reducing the global utility of the three parties and the effectiveness of data assetization. In this work, we first propose a framework for resource-decoupled FL involving three parties. Then, we design a…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Traffic Prediction and Management Techniques · Advanced Graph Neural Networks
