He, P., Lin, C., & Montoya, I. (2024). DPFedBank: Crafting a Privacy-Preserving Federated Learning Framework for Financial Institutions with Policy Pillars. arXiv preprint arXiv:2410.13753v1.
This paper introduces DPFedBank, a novel framework designed to address the challenges of collaborative machine learning in the financial sector while upholding stringent data privacy standards. The research aims to demonstrate how DPFedBank leverages Local Differential Privacy (LDP) and policy enforcement to enable secure and privacy-preserving model training among financial institutions.
The authors present a detailed architectural overview of DPFedBank, outlining its key components: clients (financial institutions), a local model training module, an LDP mechanism, an aggregator, and a central server. They describe the iterative process of model training, highlighting how LDP is applied locally to perturb model updates before transmission to the aggregator. The paper also delves into the policy and regulation aspects of DPFedBank, proposing specific measures to mitigate various threats, including malicious clients, compromised servers, and external adversaries.
The paper argues that DPFedBank effectively addresses the unique privacy and regulatory challenges faced by financial institutions seeking to collaborate on machine learning tasks. By incorporating LDP and robust policy enforcement, the framework ensures that sensitive financial data remains confidential throughout the training process. The authors emphasize that DPFedBank strikes a balance between data privacy, model utility, and regulatory compliance, making it a suitable solution for the financial sector.
DPFedBank presents a promising approach to privacy-preserving federated learning in finance. Its combination of technical mechanisms and policy enforcement provides a robust framework for secure and compliant collaborative model development. The authors conclude that DPFedBank can foster trust and cooperation among financial institutions, enabling them to leverage the benefits of machine learning without compromising data privacy.
This research contributes to the growing field of privacy-preserving machine learning, particularly in the context of federated learning. The proposed DPFedBank framework addresses the specific challenges and requirements of the financial sector, offering a practical solution for institutions to collaborate on data-driven initiatives while upholding data privacy regulations.
The paper acknowledges that the effectiveness of DPFedBank relies on the proper implementation and adherence to the proposed policies and regulations. Future research could focus on evaluating the framework's performance in real-world scenarios, exploring different LDP mechanisms, and developing more sophisticated policy enforcement mechanisms to address evolving threats.
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