ABG: A Multi-Party Mixed Protocol Framework for Privacy-Preserving Cooperative Learning
Hao Wang, Zhi Li, Chunpeng Ge, Willy Susilo

TL;DR
This paper introduces ABG^n, a multi-party protocol framework enabling flexible, privacy-preserving cooperative machine learning without extra servers, suitable for various data partitioning scenarios.
Contribution
The work presents a novel multi-party mixed protocol framework, ABG^n, supporting arbitrary conversion among sharing types for secure collaborative learning.
Findings
ABG^n achieves efficient performance in local and cloud environments.
The framework supports privacy-preserving logistic regression and neural networks.
It does not require additional servers, unlike previous methods.
Abstract
Cooperative learning, that enables two or more data owners to jointly train a model, has been widely adopted to solve the problem of insufficient training data in machine learning. Nowadays, there is an urgent need for institutions and organizations to train a model cooperatively while keeping each other's data privately. To address the issue of privacy-preserving in collaborative learning, secure outsourced computation and federated learning are two typical methods. Nevertheless, there are many drawbacks for these two methods when they are leveraged in cooperative learning. For secure outsourced computation, semi-honest servers need to be introduced. Once the outsourced servers collude or perform other active attacks, the privacy of data will be disclosed. For federated learning, it is difficult to apply to the scenarios where vertically partitioned data are distributed over multiple…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Cryptography and Data Security · Stochastic Gradient Optimization Techniques
MethodsLogistic Regression
