Dual representations for systemic risk measures
The financial crisis showed the importance of measuring, allocating and regulating systemic risk. Recently, the systemic risk measures that can be decomposed into an aggregation function and a scalar measure of risk, received a lot of attention. In this framework, capital allocations are added after...
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Veröffentlicht in: | Mathematics and financial economics 2020, Vol.14 (1), p.139-174 |
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description | The financial crisis showed the importance of measuring, allocating and regulating systemic risk. Recently, the systemic risk measures that can be decomposed into an aggregation function and a scalar measure of risk, received a lot of attention. In this framework, capital allocations are added after aggregation and can represent bailout costs. More recently, a framework has been introduced, where institutions are supplied with capital allocations before aggregation. This yields an interpretation that is particularly useful for regulatory purposes. In each framework, the set of all feasible capital allocations leads to a multivariate risk measure. In this paper, we present dual representations for scalar systemic risk measures as well as for the corresponding multivariate risk measures concerning capital allocations. Our results cover both frameworks: aggregating after allocating and allocating after aggregation. As examples, we consider the aggregation mechanisms of the Eisenberg–Noe model as well as those of the resource allocation and network flow models. |
doi_str_mv | 10.1007/s11579-019-00249-7 |
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subjects | Agglomeration Applications of Mathematics Capital Economic crisis Economic Theory/Quantitative Economics/Mathematical Methods Economics Finance Insurance International finance Macroeconomics/Monetary Economics//Financial Economics Management Mathematics Mathematics and Statistics Multivariate analysis Quantitative Finance Representations Resource allocation Risk allocation Statistics for Business |
title | Dual representations for systemic risk measures |
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