Form of presentation | Articles in international journals and collections |
Year of publication | 2017 |
Язык | английский |
|
Bochkarev Vladimir Vladimirovich, author
|
Bibliographic description in the original language |
Nasertdinova A.D, Bochkarev V.V., Reduction of the dimension of neural network models in problems of pattern recognition and forecasting//Journal of Physics: Conference Series. - 2017. - Vol.929, Is.1. - Art. № 012038. |
Annotation |
Deep neural networks with a large number of parameters are a powerful tool for solving problems of pattern recognition, prediction and classification. Nevertheless, overfitting remains a serious problem in the use of such networks. A method of solving the problem of overfitting is proposed in this article. This method is based on reducing the number of independent parameters of a neural network model using the principal component analysis, and can be implemented using existing libraries of neural computing. The algorithm was tested on the problem of recognition of handwritten symbols from the MNIST database, as well as on the task of predicting time series (rows of the average monthly number of sunspots and series of the Lorentz system were used). It is shown that the application of the principal component analysis enables reducing the number of parameters of the neural network model when the results are good. |
Keywords |
neural networks, principal component analysis, reduction of the dimension, MNIST |
The name of the journal |
Journal of Physics: Conference Series
|
URL |
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85039072328&doi=10.1088%2f1742-6596%2f929%2f1%2f012038&partnerID=40&md5=c91b8b82d293cd298f12f06a5878020a |
Please use this ID to quote from or refer to the card |
https://repository.kpfu.ru/eng/?p_id=174165&p_lang=2 |
Full metadata record |
Field DC |
Value |
Language |
dc.contributor.author |
Bochkarev Vladimir Vladimirovich |
ru_RU |
dc.date.accessioned |
2017-01-01T00:00:00Z |
ru_RU |
dc.date.available |
2017-01-01T00:00:00Z |
ru_RU |
dc.date.issued |
2017 |
ru_RU |
dc.identifier.citation |
Nasertdinova A.D, Bochkarev V.V., Reduction of the dimension of neural network models in problems of pattern recognition and forecasting//Journal of Physics: Conference Series. - 2017. - Vol.929, Is.1. - Art. № 012038. |
ru_RU |
dc.identifier.uri |
https://repository.kpfu.ru/eng/?p_id=174165&p_lang=2 |
ru_RU |
dc.description.abstract |
Journal of Physics: Conference Series |
ru_RU |
dc.description.abstract |
Deep neural networks with a large number of parameters are a powerful tool for solving problems of pattern recognition, prediction and classification. Nevertheless, overfitting remains a serious problem in the use of such networks. A method of solving the problem of overfitting is proposed in this article. This method is based on reducing the number of independent parameters of a neural network model using the principal component analysis, and can be implemented using existing libraries of neural computing. The algorithm was tested on the problem of recognition of handwritten symbols from the MNIST database, as well as on the task of predicting time series (rows of the average monthly number of sunspots and series of the Lorentz system were used). It is shown that the application of the principal component analysis enables reducing the number of parameters of the neural network model when the results are good. |
ru_RU |
dc.language.iso |
ru |
ru_RU |
dc.subject |
neural networks |
ru_RU |
dc.subject |
principal component analysis |
ru_RU |
dc.subject |
reduction of the dimension |
ru_RU |
dc.subject |
MNIST |
ru_RU |
dc.title |
Reduction of the dimension of neural network models in problems of pattern recognition and forecasting |
ru_RU |
dc.type |
Articles in international journals and collections |
ru_RU |
|