Unpacking the black box of systemic risks in banking: How causal loop modeling helps overcome rigid risk sharing and categorization
ISSN: 0368-492X
Article publication date: 24 September 2019
Issue publication date: 11 June 2020
Abstract
Purpose
Systemic risks affect financial market participants in many ways. However, the literature insists firmly that they are and, in fact, should be of little concern to (private) banks (as opposed to regulators). The purpose of this paper is to argue for the relevance of systemic risks for private banks as opposed to regulators only by making use of causal loop models as being traditionally used in the discipline of systems dynamics. In contrast to the starting point for all common risk-management frameworks in banks, which is the classification of risks into risk categories, the authors show that risk has been compartmentalized too much and provide a strong case for a really holistic approach.
Design/methodology/approach
Systems thinking, causal loop models and conceptual approach.
Findings
Relevance of systemic risks for private banks as opposed to regulators only. In contrast to the starting point for all common risk-management frameworks in banks, which is the classification of risks into risk categories, the authors show that risk has been compartmentalized too much and provide a strong case for a really holistic approach, which stems from using explanatory models such as causal loop diagrams. On top of that more explanatory models ought to be used for risk management purposes while banks currently rely too much on statistical-descriptive approaches.
Originality/value
Integration of systems thinking into risk management, which is novel: in contrast to the starting point for all common risk-management frameworks in banks, which is the classification of risks into risk categories, the authors show that risk has been compartmentalized too much and provide a strong case for a really holistic approach.
Keywords
Citation
Hoffmann, C.H. (2020), "Unpacking the black box of systemic risks in banking: How causal loop modeling helps overcome rigid risk sharing and categorization", Kybernetes, Vol. 49 No. 6, pp. 1675-1690. https://doi.org/10.1108/K-05-2019-0314
Publisher
:Emerald Publishing Limited
Copyright © 2019, Emerald Publishing Limited