Modeling financial market dynamics with the use of fuzzy
In the modern world, financial markets play an important role in the economy and people’s lives. They provide access to financial resources and are also a source of profit for many companies. However, instability in the financial markets can lead to serious consequences such as fina...
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Publishing House of the State University of Management
2024-08-01
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Online Access: | https://vestnik.guu.ru/jour/article/view/5422 |
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author | K. A. Polekhina G. Eu. Polekhina |
author_facet | K. A. Polekhina G. Eu. Polekhina |
author_sort | K. A. Polekhina |
collection | DOAJ |
description | In the modern world, financial markets play an important role in the economy and people’s lives. They provide access to financial resources and are also a source of profit for many companies. However, instability in the financial markets can lead to serious consequences such as financial crises and loss of investor confidence. In this regard, modelling the financial market dynamics becomes increasingly relevant. This work considered the use of fuzzy mathematics for this purpose. Fuzzy mathematics is a branch of mathematics that studies methods and algorithms for dealing with fuzzy data and fuzzy objects. It allows to consider uncertainty and incompleteness of information, which is especially important in the financial markets where data is often incomplete and inaccurate. The purpose of this research is to establish the relationship between financial asset prices while using behavioural factors (investor sentiment), fundamental (market returns), and microstructural ones (company size, ratio of book and market values of the company). The application of fuzzy mathematics in financial modelling will improve the accuracy and reliability of forecasts as well as increase the stability of the model to various sources of uncertainty. |
format | Article |
id | doaj-art-de228d3a678f4dde826ac8f3a33fd166 |
institution | Kabale University |
issn | 1816-4277 2686-8415 |
language | English |
publishDate | 2024-08-01 |
publisher | Publishing House of the State University of Management |
record_format | Article |
series | Вестник университета |
spelling | doaj-art-de228d3a678f4dde826ac8f3a33fd1662025-02-04T08:28:22ZengPublishing House of the State University of ManagementВестник университета1816-42772686-84152024-08-010717018010.26425/1816-4277-2024-7-170-1803164Modeling financial market dynamics with the use of fuzzyK. A. Polekhina0G. Eu. Polekhina1Bauman Moscow State Technical UniversityBauman Moscow State Technical University; Сivil Protection Academy of the Russian Ministry for Civil Defense, Emergencies, and Elimination of Consequences of Natural DisastersIn the modern world, financial markets play an important role in the economy and people’s lives. They provide access to financial resources and are also a source of profit for many companies. However, instability in the financial markets can lead to serious consequences such as financial crises and loss of investor confidence. In this regard, modelling the financial market dynamics becomes increasingly relevant. This work considered the use of fuzzy mathematics for this purpose. Fuzzy mathematics is a branch of mathematics that studies methods and algorithms for dealing with fuzzy data and fuzzy objects. It allows to consider uncertainty and incompleteness of information, which is especially important in the financial markets where data is often incomplete and inaccurate. The purpose of this research is to establish the relationship between financial asset prices while using behavioural factors (investor sentiment), fundamental (market returns), and microstructural ones (company size, ratio of book and market values of the company). The application of fuzzy mathematics in financial modelling will improve the accuracy and reliability of forecasts as well as increase the stability of the model to various sources of uncertainty.https://vestnik.guu.ru/jour/article/view/5422financial marketsfinancial market dynamicsfuzzy databehavioural factorsmicrostructure factorsfinancial modellingmodel stability |
spellingShingle | K. A. Polekhina G. Eu. Polekhina Modeling financial market dynamics with the use of fuzzy Вестник университета financial markets financial market dynamics fuzzy data behavioural factors microstructure factors financial modelling model stability |
title | Modeling financial market dynamics with the use of fuzzy |
title_full | Modeling financial market dynamics with the use of fuzzy |
title_fullStr | Modeling financial market dynamics with the use of fuzzy |
title_full_unstemmed | Modeling financial market dynamics with the use of fuzzy |
title_short | Modeling financial market dynamics with the use of fuzzy |
title_sort | modeling financial market dynamics with the use of fuzzy |
topic | financial markets financial market dynamics fuzzy data behavioural factors microstructure factors financial modelling model stability |
url | https://vestnik.guu.ru/jour/article/view/5422 |
work_keys_str_mv | AT kapolekhina modelingfinancialmarketdynamicswiththeuseoffuzzy AT geupolekhina modelingfinancialmarketdynamicswiththeuseoffuzzy |