Adaptation of General Concepts of Software Testing to Neural Networks
- Authors: Karpov Y.L.1, Karpov L.E.2,3, Smetanin Y.G.4,5
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Affiliations:
- Luxoft Professional LLC
- V.P. Ivannikov Institute for System Programming, Russian Academy of Sciences
- Moscow State University
- Federal Research Center “Computer Science and Control” of Russian Academy of Sciences
- Moscow Institute of Physics and Technology
- Issue: Vol 44, No 5 (2018)
- Pages: 324-334
- Section: Article
- URL: https://journal-vniispk.ru/0361-7688/article/view/176657
- DOI: https://doi.org/10.1134/S0361768818050031
- ID: 176657
Cite item
Abstract
The problem of testing and debugging learning neural network systems is discussed. Differences of these systems from program implementations of algorithms from the point of view of testing are noted. Requirements to the testing systems are identified. Specific features of various neural network models from the point of view of selection of the testing technique and determination of tested parameters are analyzed. It is discussed how to get rid of the noted drawbacks of the systems under study. The discussion is illustrated by an example.
About the authors
Yu. L. Karpov
Luxoft Professional LLC
Author for correspondence.
Email: y.l.karpov@yandex.ru
Russian Federation, 1-i Volokolamskii proezd 10, Moscow, 123060
L. E. Karpov
V.P. Ivannikov Institute for System Programming, Russian Academy of Sciences; Moscow State University
Author for correspondence.
Email: mak@ispras.ru
Russian Federation, ul. Solzhenitsyna 25, Moscow, 109004; Moscow, 119991
Yu. G. Smetanin
Federal Research Center “Computer Science and Control” of Russian Academy of Sciences; Moscow Institute of Physics and Technology
Author for correspondence.
Email: ysmetanin@rambler.ru
Russian Federation, ul. Vavilova 44, korp. 2, Moscow, 119333; Institutskii proezd 9, Dolgoprudnyi, Moscow oblast, 141700
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