martFL: Enabling Utility-Driven Data Marketplace with a Robust and Verifiable Federated Learning Architecture
Qi Li, Zhuotao Liu, Qi Li, Ke Xu

TL;DR
martFL introduces a secure federated learning architecture that enables privacy-preserving data trading, robust model aggregation, and fair reward distribution, significantly improving accuracy and reducing costs in data marketplaces.
Contribution
The paper presents martFL, a novel federated learning framework with a quality-aware aggregation and verifiable transaction protocols for secure, utility-driven data marketplaces.
Findings
Model accuracy improved by up to 25%.
Data acquisition costs reduced by up to 64%.
Robust aggregation against biased datasets demonstrated.
Abstract
The development of machine learning models requires a large amount of training data. Data marketplaces are essential for trading high-quality, private-domain data not publicly available online. However, due to growing data privacy concerns, direct data exchange is inappropriate. Federated Learning (FL) is a distributed machine learning paradigm that exchanges data utilities (in form of local models or gradients) among multiple parties without directly sharing the raw data. However, several challenges exist when applying existing FL architectures to construct a data marketplace: (i) In existing FL architectures, Data Acquirers (DAs) cannot privately evaluate local models from Data Providers (DPs) prior to trading; (ii) Model aggregation protocols in existing FL designs struggle to exclude malicious DPs without "overfitting" to the DA's (possibly biased) root dataset; (iii) Prior FL…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Blockchain Technology Applications and Security · Cryptography and Data Security
