Efficient privacy-preserving federated logistic regression with poor-quality users
Federated learning has garnered substantial adoption across various domains due to its ability to address privacy protection and data silo challenges to a certain degree. The importance of logistic regression, as a fundamental machine learning algorithm, naturally extends to federated logistic regre...
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creator | Zheng, Tao Li, Xueyang Chen, Xingshu Ren, Hao Shen, Changxiang |
description | Federated learning has garnered substantial adoption across various domains due to its ability to address privacy protection and data silo challenges to a certain degree. The importance of logistic regression, as a fundamental machine learning algorithm, naturally extends to federated logistic regression. However, privacy inference attacks pose a significant threat, enabling servers to infer sensitive information from the updates uploaded by clients. Moreover, unavoidable errors in data collection and storage may result in low-quality updates, which in turn, reduce the overall effectiveness of the resulting model. Although several privacy-preserving federated logistic regression schemes have been proposed to safeguard privacy, few offer effective solutions to mitigate the adverse effects of low-quality data within a unified framework. To address these shortcomings, we propose a novel privacy-preserving federated logistic regression approach designed to mitigate the impact of low-quality users. Our method employs truth discovery techniques to reduce the influence of poor-quality updates on the global model, while utilizing a double-masking technique to ensure privacy. Theoretical analysis and experimental results validate that our approach successfully achieves both privacy preservation and robustness against the detrimental effects of low-quality users. |
doi_str_mv | 10.1007/s12083-024-01840-6 |
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The importance of logistic regression, as a fundamental machine learning algorithm, naturally extends to federated logistic regression. However, privacy inference attacks pose a significant threat, enabling servers to infer sensitive information from the updates uploaded by clients. Moreover, unavoidable errors in data collection and storage may result in low-quality updates, which in turn, reduce the overall effectiveness of the resulting model. Although several privacy-preserving federated logistic regression schemes have been proposed to safeguard privacy, few offer effective solutions to mitigate the adverse effects of low-quality data within a unified framework. To address these shortcomings, we propose a novel privacy-preserving federated logistic regression approach designed to mitigate the impact of low-quality users. Our method employs truth discovery techniques to reduce the influence of poor-quality updates on the global model, while utilizing a double-masking technique to ensure privacy. 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subjects | Algorithms Communications Engineering Computer Communication Networks Data collection Effectiveness Engineering Federated learning Information Systems and Communication Service Machine learning Networks Privacy Regression analysis Regression models Signal,Image and Speech Processing Special Issue on 2 - Track on Security and Privacy |
title | Efficient privacy-preserving federated logistic regression with poor-quality users |
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