Quarterly journal published in SPbPU
and edited by prof. Dmitry Zegzhda
Peter the Great St. Petersburg Polytechnic University
Institute of computer sciences and technologies
information security of computer systems
Information Security Problems. Computer Systems
Published since 1999.
ISSN 2071-8217
PROTECTING NEURAL NETWORK MODELS FROM PRIVACY VIOLATION THREATS IN FEDERATED LEARNING USING OPTIMIZATION METHODS
P. D. Bezborodov, D. S. Lavrova
Annotation: The paper is devoted to an approach to counter threats of privacy violations in federated learning. The approach is based on optimization methods to transform the weights of local neural network models and create new weights for transmission to the joint gradient descent node, which, in turn, allows to prevent the interception of local model weights by an attacker. Experimental studies have confirmed the effectiveness of the developed approach
Keywords: federated learning, neural network models, optimization methods, gradient descent
Pages 21–29