Accounting for the effect of correlations by modulo averaging as part of neural network integration of statistical tests for small samples
https://doi.org/10.21683/1729-2646-2020-20-2-28-34
Abstract
About the Authors
A. I. IvanovRussian Federation
Alexander I. Ivanov, Doctor of Engineering, Associate Professor, Academic Advisor
Penza, 9 Sovetskaya Str.
phone: (841 2) 59 33 10
A. G. Bannykh
Russian Federation
Andrey G. Bannykh, third year post-graduate student, Department of Information Security Technology
440026, Penza, 40 Krasnaya Str., 40
phone: (841 2) 36 82 23
Yu. I. Serikova
Russian Federation
Yulia I. Serikova, third year post-graduate student, Department of Computer Technology
440026, Penza, 40 Krasnaya Str.
References
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Review
For citations:
Ivanov A.I., Bannykh A.G., Serikova Yu.I. Accounting for the effect of correlations by modulo averaging as part of neural network integration of statistical tests for small samples. Dependability. 2020;20(2):28-34. https://doi.org/10.21683/1729-2646-2020-20-2-28-34