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SecureBoost: A Lossless Federated Learning Framework

Published: 01 November 2021 Publication History

Abstract

The protection of user privacy is an important concern in machine learning, as evidenced by the rolling out of the General Data Protection Regulation (GDPR) in the European Union (EU) in May 2018. The GDPR is designed to give users more control over their personal data, which motivates us to explore machine learning frameworks for data sharing that do not violate user privacy. To meet this goal, in this article, we propose a novel lossless privacy-preserving tree-boosting system known as SecureBoost in the setting of federated learning. SecureBoost first conducts entity alignment under a privacy-preserving protocol and then constructs boosting trees across multiple parties with a carefully designed encryption strategy. This federated learning system allows the learning process to be jointly conducted over multiple parties with common user samples but different feature sets, which corresponds to a vertically partitioned dataset. An advantage of SecureBoost is that it provides the same level of accuracy as the non -privacy-preserving approach while at the same time, reveals no information of each private data provider. We show that the SecureBoost framework is as accurate as other nonfederated gradient tree-boosting algorithms that require centralized data, and thus, it is highly scalable and practical for industrial applications such as credit risk analysis. To this end, we discuss information leakage during the protocol execution and propose ways to provably reduce it.

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  • (2024)A method for detecting financial fraud in public companies based on federated learningProceedings of the 2024 4th International Conference on Artificial Intelligence, Automation and High Performance Computing10.1145/3690931.3690936(27-31)Online publication date: 19-Jul-2024
  • (2024)A Survey of Trustworthy Federated Learning: Issues, Solutions, and ChallengesACM Transactions on Intelligent Systems and Technology10.1145/367818115:6(1-47)Online publication date: 23-Jul-2024
  • (2024)Optimization of Consensus Mechanism in Inter-institutional Collaboration Models Based on Blockchain and Federated LearningProceedings of the 5th International Conference on Computer Information and Big Data Applications10.1145/3671151.3671221(387-391)Online publication date: 26-Apr-2024
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Published In

cover image IEEE Intelligent Systems
IEEE Intelligent Systems  Volume 36, Issue 6
Nov.-Dec. 2021
103 pages

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IEEE Educational Activities Department

United States

Publication History

Published: 01 November 2021

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Cited By

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  • (2024)A method for detecting financial fraud in public companies based on federated learningProceedings of the 2024 4th International Conference on Artificial Intelligence, Automation and High Performance Computing10.1145/3690931.3690936(27-31)Online publication date: 19-Jul-2024
  • (2024)A Survey of Trustworthy Federated Learning: Issues, Solutions, and ChallengesACM Transactions on Intelligent Systems and Technology10.1145/367818115:6(1-47)Online publication date: 23-Jul-2024
  • (2024)Optimization of Consensus Mechanism in Inter-institutional Collaboration Models Based on Blockchain and Federated LearningProceedings of the 5th International Conference on Computer Information and Big Data Applications10.1145/3671151.3671221(387-391)Online publication date: 26-Apr-2024
  • (2024)A Secure Enhancement Scheme for Interworking Privacy-Preserving Multi-Party Collaborative ModelingProceedings of the International Conference on Computing, Machine Learning and Data Science10.1145/3661725.3661762(1-4)Online publication date: 12-Apr-2024
  • (2024)Asynchronous Vertical Federated Learning for Kernelized AUC MaximizationProceedings of the 30th ACM SIGKDD Conference on Knowledge Discovery and Data Mining10.1145/3637528.3671930(4244-4255)Online publication date: 25-Aug-2024
  • (2024)SiGBDT: Large-Scale Gradient Boosting Decision Tree Training via Function Secret SharingProceedings of the 19th ACM Asia Conference on Computer and Communications Security10.1145/3634737.3657024(274-288)Online publication date: 1-Jul-2024
  • (2024)HQsFL: A Novel Training Strategy for Constructing High-performance and Quantum-safe Federated LearningProceedings of the 19th ACM Asia Conference on Computer and Communications Security10.1145/3634737.3656285(512-521)Online publication date: 1-Jul-2024
  • (2024)Accelerating Privacy-Preserving Machine Learning With GeniBatchProceedings of the Nineteenth European Conference on Computer Systems10.1145/3627703.3629563(489-504)Online publication date: 22-Apr-2024
  • (2024)Collaborative Fraud Detection on Large Scale Graph Using Secure Multi-Party ComputationProceedings of the 33rd ACM International Conference on Information and Knowledge Management10.1145/3627673.3679863(1473-1482)Online publication date: 21-Oct-2024
  • (2024)Trusted Model Aggregation With Zero-Knowledge Proofs in Federated LearningIEEE Transactions on Parallel and Distributed Systems10.1109/TPDS.2024.345576235:11(2284-2296)Online publication date: 1-Nov-2024
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