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JOURNALS // Computer Optics // Archive

Computer Optics, 2020 Volume 44, Issue 5, Pages 830–842 (Mi co853)

This article is cited in 4 papers

NUMERICAL METHODS AND DATA ANALYSIS

An abstract model of an artificial immune network based on a classifier committee for biometric pattern recognition by the example of keystroke dynamics

A. E. Sulavko

Omsk State Technical University, Mira, h. 11 Omsk, Russian Federation, 644050

Abstract: An abstract model of an artificial immune network (AIS) based on a classifier committee and robust learning algorithms (with and without a teacher) for classification problems, which are characterized by small volumes and low representativeness of training samples, are proposed. Evaluation of the effectiveness of the model and algorithms is carried out by the example of the authentication task using keyboard handwriting using 3 databases of biometric metrics. The AIS developed possesses emergence, memory, double plasticity, and stability of learning. Experiments have shown that AIS gives a smaller or comparable percentage of errors with a much smaller training sample than neural networks with certain architectures.

Keywords: biometric authentication, bagging, boosting, feature subspaces, machine learning on small samples, ensembles of models.

Received: 12.05.2020
Accepted: 07.08.2020

DOI: 10.18287/2412-6179-CO-717



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