Reliability Check via Weight Similarity in Privacy-Preserving Multi-Party Machine Learning

01/14/2021
by   Kennedy Edemacu, et al.
10

Multi-party machine learning is a paradigm in which multiple participants collaboratively train a machine learning model to achieve a common learning objective without sharing their privately owned data. The paradigm has recently received a lot of attention from the research community aimed at addressing its associated privacy concerns. In this work, we focus on addressing the concerns of data privacy, model privacy, and data quality associated with privacy-preserving multi-party machine learning, i.e., we present a scheme for privacy-preserving collaborative learning that checks the participants' data quality while guaranteeing data and model privacy. In particular, we propose a novel metric called weight similarity that is securely computed and used to check whether a participant can be categorized as a reliable participant (holds good quality data) or not. The problems of model and data privacy are tackled by integrating homomorphic encryption in our scheme and uploading encrypted weights, which prevent leakages to the server and malicious participants, respectively. The analytical and experimental evaluations of our scheme demonstrate that it is accurate and ensures data and model privacy.

READ FULL TEXT

page 4

page 5

page 6

page 9

page 10

page 13

page 14

page 16

research
08/04/2022

Privacy-Preserving Chaotic Extreme Learning Machine with Fully Homomorphic Encryption

The Machine Learning and Deep Learning Models require a lot of data for ...
research
01/28/2020

Privacy-Preserving Gaussian Process Regression – A Modular Approach to the Application of Homomorphic Encryption

Much of machine learning relies on the use of large amounts of data to t...
research
07/14/2020

Additively Homomorphical Encryption based Deep Neural Network for Asymmetrically Collaborative Machine Learning

The financial sector presents many opportunities to apply various machin...
research
03/31/2022

Efficient Dropout-resilient Aggregation for Privacy-preserving Machine Learning

With the increasing adoption of data-hungry machine learning algorithms,...
research
09/04/2020

Homomorphic-Encrypted Volume Rendering

Computationally demanding tasks are typically calculated in dedicated da...
research
02/06/2020

Privacy Preserving PCA for Multiparty Modeling

In this paper, we present a general multiparty model-ing paradigm with P...
research
01/26/2019

A Practical Scheme for Two-Party Private Linear Least Squares

Privacy-preserving machine learning is learning from sensitive datasets ...

Please sign up or login with your details

Forgot password? Click here to reset