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Enhancing Methods and Mechanisms for Assessing the Financial Stability of Oil and Gas Companies During Periods of Economic Instability

https://doi.org/10.26794/2304-022X-2026-16-2-55-72

Abstract

The purpose of this study is to examine the specific features of maintaining and assessing the financial stability of oil and gas companies under conditions of economic instability, as well as to identify the stages most suitable for the implementation of neural networks. The practical significance of the research lies in creating the prerequisites for the subsequent development and implementation of regulatory and methodological tools aimed at ensuring the financial stability of sectoral enterprises. Potentially, this may serve as an instrument for promoting economic development at the macroeconomic level. The findings of the study may be used by financial analysts and government regulators in assessing and managing industry-specific risks, as well as by investors and credit institutions in evaluating the financial stability of enterprises in the energy sector. However, models trained on data from relatively developed markets (such as Russia and the Gulf countries) have certain limitations, namely the possibility of reduced accuracy when applied to developing economies (for example, Angola).

About the Authors

M. R. Latypov
Gubkin Russian State University of Oil and Gas
Russian Federation

Mark R. Latypov – Postgraduate Student, Department of Financial Management Faculty of Economics and Management

Moscow



A. Kh. Ozdoeva
Gubkin Russian State University of Oil and Gas
Russian Federation

Alina Kh. Ozdoeva – Cand. Sci. (Econ.), Associate Professor, Department of Financial Management

Moscow



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Review

For citations:


Latypov M.R., Ozdoeva A.Kh. Enhancing Methods and Mechanisms for Assessing the Financial Stability of Oil and Gas Companies During Periods of Economic Instability. Management Sciences. 2026;16(2):55-72. (In Russ.) https://doi.org/10.26794/2304-022X-2026-16-2-55-72

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ISSN 2304-022X (Print)
ISSN 2618-9941 (Online)