Fostering Privacy in Collaborative Data Sharing via Auto-encoder Latent Space Embedding
Vinayak Raja, Bhuvi Chopra
2024Journal of Artificial Intelligence General science (JAIGS) ISSN 3006-402310 citationsDOIOpen Access PDF
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.
Topics & Concepts
EmbeddingComputer scienceSpace (punctuation)EncoderData sharingInformation privacyInternet privacyArtificial intelligenceMedicineAlternative medicinePathologyOperating systemPrivacy-Preserving Technologies in Data