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Evaluating banks performance using key financial indicators – a quantitative modeling of Russian banks

Author

Listed:
  • Satish Sharma
  • Mikhail Shebalkov
  • Andrey Yukhanaev

    (Northumbria University, UK
    Alfa Bank, Russia
    Northumbria University, UK)

Abstract

Since the financial crisis of 2008, risk based performance management has been one of the important indicator to determine the financial health of banks and financial institutions. This study relates to the problem within the Russian Banking sector for regulators to determine and reduce risks at the marco-level and assessing performance of banks at the micro-level. The objectives are: to analyse a range of performance indicators and to structure the Russian banking sector. To explore the structure of Russian Banking sector in terms of performance over the period 2000-2010, we took a sample of 1279 banks and the financial data which was in the HTML format was extracted through PHP programming. With the help of trend analysis, the period 2000-2010 was divided into four sub periods: the period of stabilization (2002-2004), substantial development (2004-2007), financial crisis (2007-2009) and moderate development (2009-2010). Multivariate analysis were applied to classify the sample banks in these sub periods which provides evidence that despite the changes in the stage of development of the economy, the Russian Banking sector can be described with quantitative modeling. Naturally, the structural changes are affected by the described economic cycles, but these changes do not affect the determination capabilities of the model. In the period 2002-2004, nine types of banks are found. There are some prosperous as well as weak banks. During the period 2004-2007, banks had a chance to increase their profits; the banking sector became more differentiated – 12 clusters are singled out. There is no doubt that the financial crisis also affected the banking industry; there were still 12 clusters in 2007-2009, but the majority were concentrated into a single cluster with low performance indicators. Finally, the Russian banking sector started its development in the period 2009-2010, uniting some bank clusters, 10 groups are found. The results indicated that through mathematical modelling, Russian banks could be rated as “rating groups” based on their performance which might be of particular interest to bank’s managers, investors, credit analysts and bank regulators. Moreover, it could be emphasized that the changes in structure are not significant, as certain groups of banks can be found at any period of time. These groups or clusters can be referred to certain “rating groups” (from the banks with the best results to those with low results) and compared to international ratings.

Suggested Citation

  • Satish Sharma & Mikhail Shebalkov & Andrey Yukhanaev, 2016. "Evaluating banks performance using key financial indicators – a quantitative modeling of Russian banks," Journal of Developing Areas, Tennessee State University, College of Business, vol. 50(1), pages 425-453, January-M.
  • Handle: RePEc:jda:journl:vol.50:year:2016:issue1:pp:425-453
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    Citations

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    Cited by:

    1. Salvador Linares-Mustar'os & Maria `Angels Farreras-Noguer & N'uria Arimany-Serrat & Germ`a Coenders, 2022. "New financial ratios based on the compositional data methodology," Papers 2210.11138, arXiv.org.
    2. Chien-Ming Huang & Wei Yang & Ren-Qing Zeng, 2020. "Analysis on the Efficiency of Risk Management in the Chinese Listed Companies," Mathematics, MDPI, vol. 8(10), pages 1-13, October.
    3. Raj Yadav, 2014. "Twenty Five Years of Russian Banking System," International Studies, , vol. 51(1-4), pages 101-117, January.

    More about this item

    Keywords

    Banks; Performance; Multivariate Analysis;
    All these keywords.

    JEL classification:

    • G17 - Financial Economics - - General Financial Markets - - - Financial Forecasting and Simulation
    • G21 - Financial Economics - - Financial Institutions and Services - - - Banks; Other Depository Institutions; Micro Finance Institutions; Mortgages
    • G32 - Financial Economics - - Corporate Finance and Governance - - - Financing Policy; Financial Risk and Risk Management; Capital and Ownership Structure; Value of Firms; Goodwill

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