Operational Risk Management in Banks: A Bibliometric Analysis and Opportunities for Future Research
Abstract
:1. Introduction
2. Literature Review
2.1. Overview of Operational Risk Management in Banks
2.2. Overview of Bibliometric Studies
2.3. Research Gaps and Significance of the Study
3. Materials and Methods
3.1. Document Selection
- The downloading of R and RStudio;
- Exporting of the BIB file from Scopus;
- Exporting of the BIB file from Web of Science (WoS);
- The merging of BIB files to generate an XLSX file using RStudio (refer to Appendix A for the details of the code used);
- The uploading of the XLSX file to Biblioshiny (Bibliometrix’s interface) for performing analysis.
3.2. Bibliometric Analysis
- Trend Analysis: This analysis is useful to identify the patterns of literature growth and show if academicians have had more or reduced interest in a specific domain over this time span. The trend analysis was performed in this study for the period 2010 until March 2023.
- Citation Analysis: With the help of citation analysis, important research papers and key authors who have made significant contributions to the research domain are pinpointed. Increased citations indicated a higher interest in that subject matter by academicians (Mahadevan and Joshi 2021). The citation analysis has been used in the current study to identify the top documents.
- Important contributors: These would be the top authors, countries, journals, and affiliations. This is useful to identify key research done in this field and could possibly help in networking/collaborating for future research.
- Keyword frequency analysis: This analysis helps identify the most frequently used words by authors to depict their research.
- Bibliographic coupling: This technique is used to ascertain a similarity relationship between research papers. This technique is used as there are several common references (Khanra et al. 2021).
3.3. Network Visualization Analysis
- Analysis of co-occurrences of the keywords: It is performed by mapping the relationships between author keywords, which provides insight into the approach followed by academicians.
- Visual map of countries: This helps to understand the collaborations among several authors and countries. This enables the key clusters of countries that work together for the research to be reflected.
3.4. Content Analysis
- Analysis of themes: Various themes in the current domain of ORM in banks can be identified, and accordingly, further analysis could be performed.
- Future research direction: Analysis of the content of the various research articles can help identify future research areas, which can be a tremendous help to researchers in this domain.
4. Results and Findings
4.1. Descriptive Statistics
4.2. Analysis of Important Authors and Countries
4.3. Keyword Analysis
4.4. Bibliographic Coupling
4.5. Network Visualization Analysis
4.5.1. Visual Map of Co-Occurrences of Author Keywords
4.5.2. Visual Map of Countries Based on Analysis of Co-Authorship
4.6. Thematic Analysis
- Analysis of various operational risks and ways to mitigate such risks;
- Operational risk management regulations;
- Operational risk modeling.
5. Discussion
5.1. Analysis of Trends and Significant Contributors to This Research Field
5.2. Analysis of the Most Relevant and Important Keywords in This Domain
5.3. Current Themes
5.4. Emerging Methods for Performing Structured Literature Review in the Future
5.5. Future Research Scope in This Domain
- Climate risk impact analysis: This topic has emerged as a significant focus area in the last few years due to the tremendous impact that could be a result of climate-related risks. The pandemic also furthered these concerns, as it was thought to be a consequence of human actions. There has been an increased awareness of climate-related risks among various institutions. Sustainable green financing is the way forward in the future. A detailed analysis of the impact of climate risks on banks would be a brilliant option for conducting research in the future.
- Information security risk: There has been an accelerated pace of digitization in the last few years, which has resulted in complex and more prevalent cyber security and data-related risks. Appropriate analytics tools would be required to manage these risks. A detailed study of the trends in this area would be of great use to bankers, corporations, and regulators for the management of these risks.
- Geopolitical risk: In the last few years, several sources of geopolitical risk have emerged, such as the Russia–Ukraine conflict, the Israel–Palestine war, strained relations among various countries, higher inflation, and competing interests across Europe. The geopolitical situation has become unpredictable, and enhanced risk expertise is required to cope with this rapidly changing risk environment. Banks are important participants in ensuring the flow of funds across the globe, and such risks impact the investment decisions made by global investors. The friction among countries impacts their trade decisions, and if this is extended for a longer time, it will have a significant impact on those countries. A thorough analysis of the impact of geopolitical risks on banks would be an insightful area for future research.
- Third-party risk: The COVID-19 pandemic and the surge in geopolitical events in the recent past have made it necessary for banks and organizations to review the relationships with third-party providers as there is a high probability of risks related to disruption. Therefore, various risk considerations, such as data-related risks, cyber security, concentration risk, and contingency planning, would need to be considered while making third-party decisions. An analysis of the ever-dynamic third-party risks can be an interesting area for future research.
- Regulatory compliance risk: Banking organizations need to adhere to regulations issued by several local and global regulators. In addition, there has been an increased volume of regulatory changes with stringent timelines; therefore, managing regulatory compliance is challenging for both banks and their customers. Additionally, it has been observed that regulators across the globe have zero tolerance for any non-compliance, which increases the risks of penalties manifold. A detailed analysis of this risk category and coming up with best practices to mitigate these risks would be a useful research area for bankers, regulators, and academics.
5.6. Theoretical and Practical Implications
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Appendix A
References
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Research Question | Purpose | |
---|---|---|
RQ1 | What are the most relevant and important keywords that can be used by future researchers to search for relevant articles in the existing literature in this domain? | To assist researchers in searching relevant articles based on keyword searches (Aria and Cuccurullo 2017). |
RQ2 | What are the current themes in the existing literature that can be used for further deep-dive analysis and the identification of research gaps by researchers in the future? | To analyze popular themes in the current research area. Gaps in research can be identified based on a review of existing literature. |
RQ3 | What are the emerging methods that can be used to perform a quick and effective structured literature review in the future? | This would help future researchers improve their productivity by performing faster and more effective structured literature reviews. |
RQ4 | What are the areas that should be focused on for conducting future research in this domain? | The most important research question that provides direction to future researchers and opportunities for advancement in this field of study (Khanra et al. 2021). |
Details | Outcome |
---|---|
Sources (journals, books, etc.) | 353 |
DOCUMENT CONTENTS | |
Keywords plus (ID) | 1443 |
Author’s keywords (DE) | 2218 |
AUTHOR COLLABORATION | |
Single-authored docs | 117 |
Co-authors per doc | 8.6 |
International co-authorships % | 21.89 |
Title of Paper | Field of Research | References | DOI | Total Citations (TC) |
---|---|---|---|---|
“Efficiency Measures of the Chinese Commercial Banking System Using an Additive Two-Stage DEA” | Bank efficiency | Wang et al. (2014) | 10.1016/j.omega.2013.09.005 | 235 |
“Bank Governance, Regulation, Supervision, and Risk Reporting: Evidence from Operational Risk Disclosures in European Banks” | Inadequate governance and disclosures | Barakat and Hussainey (2013) | 10.1016/j.irfa.2013.07.002 | 123 |
“Enterprise Risk Management: Coping with Model Risk in a Large Bank” | Model risk | Wu and Olson (2010) | 10.1057/jors.2008.144 | 114 |
“Machine Learning in Banking Risk Management: A Literature Review” | Fraud risk | Leo et al. (2019) | 10.3390/risks7010029 | 105 |
“Supply Chain Financing Using Blockchain: Impacts on Supply Chains Selling Fashionable Products” | Supply chain operational risk | Choi (2020) | 10.1007/s10479-020-03615-7 | 101 |
“A Comprehensive Analysis of the Effects of Risk Measures on Bank Efficiency: Evidence from Emerging Asian Countries” | Relationship between risks and efficiency | Sun and Chang (2011) | 10.1016/j.jbankfin.2010.11.017 | 97 |
“Operational risk and reputation in the financial industry” | Analysis of operational risk events | Gillet et al. (2010) | 10.1016/j.jbankfin.2009.07.020 | 86 |
“Assessing the efficiency and total factor productivity growth of the banking industry: do environmental concerns matters?” | Environmental degradation | Shair et al. (2021) | 10.1007/s11356-020-11938-y | 74 |
“Risk in Islamic banking and corporate governance” | Corporate governance | Safiullah and Shamsuddin (2018) | 10.1016/j.pacfin.2017.12.008 | 67 |
“The determinants of reputational risk in the banking sector” | Reputation risk | Fiordelisi et al. (2013) | 10.1016/j.jbankfin.2012.04.021 | 62 |
Journal | Total Link Strength |
---|---|
European Journal of Operational Research | 6630 |
Journal of Operational Risk | 3666 |
Journal of the Operational Research Society | 2550 |
International Transactions in Operational Research | 1860 |
Journal of Risk and Financial Management | 1570 |
Journal of Banking & Finance | 1272 |
Journal of Asian Finance Economics and Business | 1120 |
Operational Risk Management in Banks: Regulatory, Organizational and Strategic Issues | 1120 |
International Review of Financial Analysis | 815 |
Financial and Credit Activity—Problems of Theory and Practice | 810 |
Risk Analysis | Primary Data Source | Analysis Method/Tool | References |
---|---|---|---|
Inadequate governance and disclosures | Review of risk disclosures | Multivariate regression | Barakat and Hussainey (2013) |
Fraud risk | Literature review: Machine learning | Evaluation of machine learning | Leo et al. (2019) |
Relationship between risks and efficiency | Data from Bankscope database | Stochastic frontier approach and data envelopment analysis using Stata 9.0 software | Sun and Chang (2011) |
Analysis of operational risk events | Data from the FIRST database | Analysis of returns around the operational loss event date | Gillet et al. (2010) |
Environmental degradation | Data on efficiency and total factor productivity | Data envelopment analysis | Shair et al. (2021) |
Corporate governance | Data from Bankscope database | Multivariate regression | Safiullah and Shamsuddin (2018) |
Reputation risk | Data on operational risk events | Multivariate regression | Fiordelisi et al. (2013) |
Analysis of operational risk events | Data from the FIRST database | Multivariate regression | Wang and Hsu (2013) |
Corporate governance | Analysis of various literature in this domain | Discussion/Review | Ginena (2014) |
Integrated risk management | Market and credit loss returns | Time series, marginal loss return distributions and the copula parameters | Grundke (2010) |
Systemic operational risk | Review of LIBOR manipulation | Discussion/Review of Systemic Operational Risks | McConnell (2013) |
Relationship between risks and efficiency | Banking industry data | Stochastic frontier approach | Delis et al. (2017) |
Determinants of risk disclosures | Annual reports of banks | Creation of Risk Disclosure Index | Nahar et al. (2016) |
Reputation risk | Detailed academic analysis of these new insurance policies and conceptualization of reputation risk | Discussion/Review | Gatzert et al. (2016) |
Systemic risk and financial contagion | Credit default swap data | Tlasso model | Torri et al. (2018) |
Risk management committee determinants and consequences | 10-K Wizard keyword search on financial institutions | Probit regression model | Hines and Peters (2015) |
Risk management and financial stability | Ratios calculated based on data from the State Bank of Pakistan | OLS regression Model | Hafiz et al. (2019) |
Human operational risk management | Data on four random variable sets, i.e., demand, capacities, initial capability and operation efficiency | Stochastic programming techniques | Fragniere et al. (2010) |
Business complexity and risk management | Data on operational risk events | Analysis of key contributing factors | Chernobai et al. (2011) |
Information asymmetry | Analysis of operational announcements and their trades on the stock exchange | Information asymmetry model | Barakat et al. (2014) |
Issues in operational risk capital modeling | Published literature and author’s experience | Discussion/Review | Chaudhury (2010) |
Cybersecurity hazards | Literature review | Systematic Review | Uddin et al. (2020) |
Barriers to the implementation of Basel regulations | Survey questionnaire | Logistic Regression Model | Masood and Fry (2012) |
Relationship between credit risk and operational risk | Survey questionnaire | PLS-SEM model | Rehman et al. (2020) |
Estimation of maximum potential losses | Digital banking transaction risk data due to downtime | Extreme Value at Risk | Saputra et al. (2022) |
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Jadwani, B.; Parkhi, S.; Mitra, P.K. Operational Risk Management in Banks: A Bibliometric Analysis and Opportunities for Future Research. J. Risk Financial Manag. 2024, 17, 95. https://doi.org/10.3390/jrfm17030095
Jadwani B, Parkhi S, Mitra PK. Operational Risk Management in Banks: A Bibliometric Analysis and Opportunities for Future Research. Journal of Risk and Financial Management. 2024; 17(3):95. https://doi.org/10.3390/jrfm17030095
Chicago/Turabian StyleJadwani, Barkha, Shilpa Parkhi, and Pradip Kumar Mitra. 2024. "Operational Risk Management in Banks: A Bibliometric Analysis and Opportunities for Future Research" Journal of Risk and Financial Management 17, no. 3: 95. https://doi.org/10.3390/jrfm17030095
APA StyleJadwani, B., Parkhi, S., & Mitra, P. K. (2024). Operational Risk Management in Banks: A Bibliometric Analysis and Opportunities for Future Research. Journal of Risk and Financial Management, 17(3), 95. https://doi.org/10.3390/jrfm17030095