Download PDFOpen PDF in browserSecuring Insights: Safeguarding Sensitive Data in Machine Learning Through Privacy-Preserving TechniquesEasyChair Preprint 120427 pages•Date: February 12, 2024AbstractThis paper explores the critical need for privacy-preserving techniques in machine learning to ensure the security of sensitive data. As the integration of machine learning models becomes ubiquitous in various domains, protecting confidential information is paramount. The proposed techniques discussed here aim to strike a balance between harnessing the power of data for model training and safeguarding individual privacy. From federated learning to homomorphic encryption, this paper delves into diverse methods that contribute to a robust framework for privacy preservation in machine learning. Keyphrases: Anonymization, Data Security, Federated Learning, Model Aggregation, differential privacy, homomorphic encryption, machine learning, privacy preserving, secure multi-party computation, sensitive data
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