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Assessing the Impact of Expert Labelling of Training Data on the Quality of Automatic Classification of Lithological Groups Using Artificial Neural Networks Cover

Assessing the Impact of Expert Labelling of Training Data on the Quality of Automatic Classification of Lithological Groups Using Artificial Neural Networks

Open Access
|Dec 2020

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DOI: https://doi.org/10.2478/acss-2020-0016 | Journal eISSN: 2255-8691 | Journal ISSN: 2255-8683
Language: English
Page range: 145 - 152
Published on: Dec 28, 2020
In partnership with: Paradigm Publishing Services
Publication frequency: Volume open

© 2020 Yan Kuchin, Ravil Mukhamediev, Kirill Yakunin, Janis Grundspenkis, Adilkhan Symagulov, published by Riga Technical University
This work is licensed under the Creative Commons Attribution 4.0 License.