Forecasting Stock Prices of Companies Producing Solar Panels Using Machine Learning Methods

Author:

Shaikh Zaffar A.1ORCID,Kraikin Andrey2,Mikhaylov Alexey3ORCID,Pinter Gabor4

Affiliation:

1. Faculty of Computer Science and Information Technology, Benazir Bhutto Shaheed University Lyari, Karachi 75660, Pakistan

2. Financial Faculty, Financial University Under the Government of the Russian Federation, Moscow 124167, Russia

3. Financial Markets and Financial Engineering Department, Financial University Under the Government of the Russian Federation, Moscow 124167, Russia

4. University of Pannonia, Veszprém, Hungary

Abstract

Solar energy has become an integral part of the economy of developed countries, so it is important to monitor the pace of its development, prospects, as well as the largest companies that produce solar panels since the supply of solar energy in a particular country directly depends on them. The study analyzes the shares of Canadian Solar Inc. and First Solar Inc. The purpose of the study is to study the possibility of forecasting the stock price of solar energy companies using neural networks for the purpose of subsequent investment. The recurrent neural network LSTM is used in the article and this approach is based on complexity theory. Machine learning technologies are now being actively implemented in various sectors of the economy and are considered effective. The program used assigns different significance to the data of the last months and the data for the first months of the 1st year. The first year of the last 5 years of the company’s activity is taken as the first year since more distant data no longer have significant significance for the forecast. In the course of the study, a forecast of the stock price of Canadian Solar Inc. and First Solar Inc. for 245 days was obtained. Based on the results obtained, the following conclusions were made: 20 neurons of the network is not enough to make an accurate forecast, but the level of confidence in such a forecast is high enough, neural network forecasts are applicable in investing and are accurate enough to determine medium- and long-term trends, but these forecasts are not applicable for traders. The direction of improving the accuracy of neural network predictions is promising for further research.

Funder

Recovery and Resilience Facility of the European Union

Publisher

Hindawi Limited

Subject

Multidisciplinary,General Computer Science

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