Fostering Privacy in Collaborative Data Sharing via Auto-encoder Latent Space Embedding

Vinayak Raja, Bhuvi Chopra
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Abstract

Securing privacy in machine learning via collaborative data sharing is essential for organizations seeking to harness collective data while upholding confidentiality. This becomes especially vital when protecting sensitive information across the entire machine learning pipeline, from model training to inference. This paper presents an innovative framework utilizing Representation Learning via autoencoders to generate privacy-preserving embedded data. As a result, organizations can distribute these representations, enhancing the performance of machine learning models in situations where multiple data sources converge for a unified predictive task downstream.
通过自动编码器潜空间嵌入促进协作数据共享中的隐私保护
通过协作数据共享来保护机器学习中的隐私,对于希望在利用集体数据的同时维护机密性的企业来说至关重要。在保护从模型训练到推理的整个机器学习管道中的敏感信息时,这一点变得尤为重要。本文提出了一个创新框架,通过自动编码器利用表征学习生成保护隐私的嵌入式数据。因此,企业可以分发这些表征,从而在多个数据源汇聚到下游执行统一预测任务的情况下提高机器学习模型的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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