СOCALC AS A LEARNING TOOL FOR NEURAL NETWORK SIMULATION IN THE SPECIAL COURSE “FOUNDATIONS OF MATHEMATIC INFORMATICS”

Authors

DOI:

https://doi.org/10.14308/ite000674

Keywords:

CoCalc, cloud technologies, neural network simulation, foundations of mathematical informatics

Abstract

The role of neural network modeling in the learning сontent of special course “Foundations of Mathematic Informatics” was discussed. The course was developed for the students of technical universities – future IT-specialists and directed to breaking the gap between theoretic computer science and it’s applied applications: software, system and computing engineering. CoCalc was justified as a learning tool of mathematical informatics in general and neural network modeling in particular. The elements of technique of using CoCalc at studying topic “Neural network and pattern recognition” of the special course “Foundations of Mathematic Informatics” are shown. The program code was presented in a CofeeScript language, which implements the basic components of artificial neural network: neurons, synaptic connections, functions of activations (tangential, sigmoid, stepped) and their derivatives, methods of calculating the network`s weights, etc. The features of the Kolmogorov’s theorem application were discussed for determination the architecture of multilayer neural networks. The implementation of the disjunctive logical element and approximation of an arbitrary function using a three-layer neural network were given as an examples. According to the simulation results, a conclusion was made as for the limits of the use of constructed networks, in which they retain their adequacy. The framework topics of individual research of the artificial neural networks is proposed.

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References

<uk>
1. Markova, O.M., Semerikov, S.O. & Striuk, A. M. (2015). The cloud technologies of learning: origin. Information Technologies and Learning Tools, 46(2), 29-44.
2. Permiakova, O.S. & Semerikov, S.O. (2008). The use of neural networks in forecasting problems. Materials of the International Scientific and Practical Conference “Young scientist of the XXI century”, KTU, Kryviy Rih, 17-18 November 2008.
3. Popel, M.V. (2015). Organization of learning mathematical disciplines in SageMathCloud. Publishing Department of the Kryviy Rih National University, Kryviy Rih.
4. SageMath, Inc. (2018). CoCalc - Collaborative Calculation in the Cloud. Retrieved from https://cocalc.com.
5. Semerikov, S., Teplytskyi, I. & Yechkalo, Yu. (2018). Computer Simulation of Neural Networks Using Spreadsheets: The Dawn of the Age of Camelot.Proceedings of the 14th Interna-tional Conference on ICT in Education, Research and Industrial Applications. Integration, Harmonization and Knowledge Transfer. Kyiv, 14-17 May 2018. CEUR Workshop Pro-ceedings.
6. Shokaliuk, S.V., Markova, O.M., Semerikov, S.O. & Soloviov, V.M. (Ed.) (2017). SageMathCloud as the Learning Tool Cloud Technologies of the Computer-Based Studying Mathematics and Informatics Disciplines. Modeling in Education: State. Problems. Prospects, 130-142.
7. Stein, W. (2014). What can SageMathCloud (SMC) do? Sage: open source mathematics software. Retrieved from http://sagemath.blogspot.com/2014/05/what-can-sagemathcloud-smc-do.html.
8. Teplytskyi, I.O. & Semerikov, S.O. (2007). Computer simulation of absolute and relative motions of the planets the Solar system. Collection of scientific works of the Kamyanets-Podilsky National University named after Ivan Ogienko. Series: Pedagogical, 13, 211-214.
9. Turavinina, O.M. & Semerikov, S.O. (2012). Contents of the learning of the foundations of mathematical informatics of students of technical universities. Proceedings of the International scientific and methodical conference on Development of intellectual abilities and creative abilities of students and students in the process of teaching disciplines of the natural sciences and mathematics cycle, Sumy State Pedagogical University named after A. S. Makarenko, Sumy, 6-7 December 2012.
10. Turavinina, O.M. (2012). Mathematical informatics in the system fundamen-talization learning the students of technical universities. Collection of scientific works of the Kamyanets-Podilsky National University named after Ivan Ogienko. Series: Pedagogical, 18, 189-191.
</uk>
<en>
1. Markova, O.M., Semerikov, S.O. & Striuk, A. M. (2015). The cloud technologies of learning: origin. Information Technologies and Learning Tools, 46(2), 29-44.
2. Permiakova, O.S. & Semerikov, S.O. (2008). The use of neural networks in forecasting problems. Materials of the International Scientific and Practical Conference “Young scientist of the XXI century”, KTU, Kryviy Rih, 17-18 November 2008.
3. Popel, M.V. (2015). Organization of learning mathematical disciplines in SageMathCloud. Publishing Department of the Kryviy Rih National University, Kryviy Rih.
4. SageMath, Inc. (2018). CoCalc - Collaborative Calculation in the Cloud. Retrieved from https://cocalc.com.
5. Semerikov, S., Teplytskyi, I. & Yechkalo, Yu. (2018). Computer Simulation of Neural Networks Using Spreadsheets: The Dawn of the Age of Camelot.Proceedings of the 14th Interna-tional Conference on ICT in Education, Research and Industrial Applications. Integration, Harmonization and Knowledge Transfer. Kyiv, 14-17 May 2018. CEUR Workshop Pro-ceedings.
6. Shokaliuk, S.V., Markova, O.M., Semerikov, S.O. & Soloviov, V.M. (Ed.) (2017). SageMathCloud as the Learning Tool Cloud Technologies of the Computer-Based Studying Mathematics and Informatics Disciplines. Modeling in Education: State. Problems. Prospects, 130-142.
7. Stein, W. (2014). What can SageMathCloud (SMC) do? Sage: open source mathematics software. Retrieved from http://sagemath.blogspot.com/2014/05/what-can-sagemathcloud-smc-do.html.
8. Teplytskyi, I.O. & Semerikov, S.O. (2007). Computer simulation of absolute and relative motions of the planets the Solar system. Collection of scientific works of the Kamyanets-Podilsky National University named after Ivan Ogienko. Series: Pedagogical, 13, 211-214.
9. Turavinina, O.M. & Semerikov, S.O. (2012). Contents of the learning of the foundations of mathematical informatics of students of technical universities. Proceedings of the International scientific and methodical conference on Development of intellectual abilities and creative abilities of students and students in the process of teaching disciplines of the natural sciences and mathematics cycle, Sumy State Pedagogical University named after A. S. Makarenko, Sumy, 6-7 December 2012.
10. Turavinina, O.M. (2012). Mathematical informatics in the system fundamen-talization learning the students of technical universities. Collection of scientific works of the Kamyanets-Podilsky National University named after Ivan Ogienko. Series: Pedagogical, 18, 189-191.
</en>

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Published

30.10.2018

How to Cite

Markova, O., Semerikov, S., & Popel, M. (2018). СOCALC AS A LEARNING TOOL FOR NEURAL NETWORK SIMULATION IN THE SPECIAL COURSE “FOUNDATIONS OF MATHEMATIC INFORMATICS”. Journal of Information Technologies in Education (ITE), (36), 058–070. https://doi.org/10.14308/ite000674