A Survey On Secure Machine Learning
Taobo Liao, Taoran Li, Prathamesh Nadkarni

TL;DR
This survey reviews recent advances in secure multiparty computation (MPC) applied to machine learning, highlighting frameworks, protocols, and applications that enable privacy-preserving collaborative ML across various industries.
Contribution
It provides a comprehensive overview of SecureML libraries, cryptographic protocols, and frameworks integrating MPC with ML, including novel applications in gaming environments.
Findings
MPC enhances privacy in collaborative machine learning.
SecureML frameworks support both semi-honest and malicious models.
Integration of MPC in gaming demonstrates new application potentials.
Abstract
In this survey, we will explore the interaction between secure multiparty computation and the area of machine learning. Recent advances in secure multiparty computation (MPC) have significantly improved its applicability in the realm of machine learning (ML), offering robust solutions for privacy-preserving collaborative learning. This review explores key contributions that leverage MPC to enable multiple parties to engage in ML tasks without compromising the privacy of their data. The integration of MPC with ML frameworks facilitates the training and evaluation of models on combined datasets from various sources, ensuring that sensitive information remains encrypted throughout the process. Innovations such as specialized software frameworks and domain-specific languages streamline the adoption of MPC in ML, optimizing performance and broadening its usage. These frameworks address both…
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Taxonomy
TopicsNetwork Security and Intrusion Detection · Advanced Malware Detection Techniques
