Validation of Stock Price Prediction Models in the Conditions of Financial Crisis

Author:

Mihova Vesela1ORCID,Georgiev Ivan12ORCID,Raeva Elitsa1ORCID,Georgiev Slavi12ORCID,Pavlov Velizar1ORCID

Affiliation:

1. Department of Applied Mathematics and Statistics, University of Ruse, 8 Studentska Str., 7004 Ruse, Bulgaria

2. Department of Informational Modeling, Institute of Mathematics and Informatics, Bulgarian Academy of Sciences, 8 Acad. Georgi Bonchev Str., 1113 Sofia, Bulgaria

Abstract

The distribution laws of various natural and anthropogenic processes in the world around us are stochastic in nature. The development of mathematics and, in particular, of stochastic modeling allows us to study regularities in such processes. In practice, stochastic modeling finds a huge number of applications in various fields, including finance and economics. In this work, some particular applications of stochastic processes in finance are examined in the conditions of financial crisis, aiming to provide a solid approach for stock price forecasting. More specifically, autoregressive integrated moving average (ARIMA) models and modified ordinary differential equation (ODE) models, previously developed by some of the authors to predict the asset prices of four Bulgarian companies, are validated against a time period during the crisis. Estimated rates of return are calculated from the models for one period ahead. The errors are estimated and the models are compared. The return values predicted with each of the two approaches are used to derive optimal risk portfolios based on the Markowitz model, which is the second major aim of this study. The third aim is to compare the resulting portfolios in terms of distribution (i.e., weights of the stocks), risk, and rate of return.

Funder

Science and Education for Smart Growth

European Structural and Investment Funds

Publisher

MDPI AG

Subject

General Mathematics,Engineering (miscellaneous),Computer Science (miscellaneous)

Reference15 articles.

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2. Mihova, V., Centeno, V., Georgiev, I., and Pavlov, V. (2023). New Trends in the Applications of Differential Equations in Sciences, Springer.

3. Balancing of systematic and stochastic errors in Monte Carlo algorithms for integral equations;Dimov;Lecture Notes in Computer Science,2015

4. Ngo, H.D., and Bros, W. (May, January 28). The Box-Jenkins methodology for time series models. Proceedings of the SAS Global Forum 2013 Conference, San Francisco, CA, USA.

5. (2023, October 26). Matlab’s ARIMA Methodology. Available online: https://www.mathworks.com/help/econ/arimaclass.html?searchHighlight=arima&s_tid=doc_srchtitle.

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