Direct and Hierarchical Models for Aggregating Spatially Dependent Catastrophe Risks
Abstract
:1. Introduction
2. Copula Trees
2.1. Problem Statement
2.2. Direct Model
2.3. Hierarchical Model
2.4. Implementation of Risk Aggregation at Branching Nodes
2.4.1. Split-Atom Convolution
Algorithm 1: Split-Atom Convolution: 9-products |
Input: Two discrete pdfs and with supports: ; ; and probabilities: ; - maximum number of points for discretizing convolution grid
and the associated probabilities , where , , . |
Algorithm 2: Brute force convolution for supports with the same span |
Input: Two discrete probability density functions and , where the supports of X and Y are defined using the same span h as: , and the associated probabilities as ,
and the corresponding probabilities . |
2.4.2. Regriding
Algorithm 3: Linear regriding |
Algorithm 4: 4-point regridding, Stage I |
Algorithm 5: 4-point regridding, Stage II |
2.4.3. Comonotonization and Mixture Approximation
Algorithm 6: Distribution of the comonotonic sum |
2.5. Order of Convolutions and Tree Topology
3. Results
4. Conclusions
5. Future Research Directions
Author Contributions
Funding
Conflicts of Interest
Appendix A
Algorithm A1: Split-Atom Convolution: 4-products |
Input: Two discrete pdfs and with supports: ; ; and probabilities: ; ; - maximum number of points for discretizing convolution grid
and the associated probabilities , where . |
Algorithm A2: Modified local moment matching |
Input: Discrete pdf with fine scale support and associated probabilities ; the support of coarse scale probability mass function : . Requirement: , , .
|
Appendix B
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MC | Linear Regriding No Truncation | Linear Regriding Tail Truncation | 4-Point Regridding | ||
---|---|---|---|---|---|
(A) | 44.3 | 44.3 (0.00%) | 44.3 (0.00%) | 44.3 (0.00%) | |
7.1 | 10.9 (53.02%) | 7.1 (0.00%) | 7.1 (0.00%) | ||
TVaR1% | 51.4 | 2550.9 (4864.2%) | 2550.8 (4864.0%) | 2550.8 (4863.9%) | |
TVaR5% | 48.5 | 502.1 (934.7%) | 501.4 (932.8%) | 501.9 (933.8%) | |
TVaR10% | 47.6 | 252.0 (429.7%) | 250.7 (427.1%) | 251.0 (427.6%) | |
(B) | 44.3 | 44.3 (0.00%) | 44.3 (0.00%) | 44.3 (0.00%) | |
7.1 | 7.6 (6.11%) | 7.1 (0.00%) | 7.1 (0.00%) | ||
TVaR1% | 93.7 | 81.2 (−13.3%) | 84.7 (−9.6%) | 88.0 (−6.1%) | |
TVaR5% | 66.3 | 62.5 (−5.8%) | 68.5 (3.4%) | 66.8 (0.8%) | |
TVaR10% | 58.6 | 67.3 (15.0%) | 60.5 (3.3%) | 59.8 (2.1%) | |
(C) | 44.3 | 44.3 (0.00%) | 44.3 (0.00%) | 44.3 (0.00%) | |
7.1 | 7.2 (1.55%) | 7.1 (0.00%) | 7.1 (0.00%) | ||
TVaR1% | 75.9 | 151.0 (98.9%) | 95.0 (25.2%) | 76.0 (0.1%) | |
TVaR5% | 62.9 | 184.4 (193.4%) | 98.0 (55.8%) | 63.5 (0.9%) | |
TVaR10% | 58.4 | 95.8 (63.9%) | 87.0 (48.9%) | 59.1 (1.1%) |
Aggregation Model | MC | Linear Regridding No Truncation | Linear Regriding Tail Truncation | 4-Point Regriding |
---|---|---|---|---|
Direct | 1539 | 0.25 | 0.26 | 0.33 |
Hierarchical, sequential | 12,769 | 0.34 | 0.35 | 0.44 |
Hierarchical, RNN | 10,512 | 0.40 | 0.41 | 0.52 |
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Wójcik, R.; Liu, C.W.; Guin, J. Direct and Hierarchical Models for Aggregating Spatially Dependent Catastrophe Risks. Risks 2019, 7, 54. https://doi.org/10.3390/risks7020054
Wójcik R, Liu CW, Guin J. Direct and Hierarchical Models for Aggregating Spatially Dependent Catastrophe Risks. Risks. 2019; 7(2):54. https://doi.org/10.3390/risks7020054
Chicago/Turabian StyleWójcik, Rafał, Charlie Wusuo Liu, and Jayanta Guin. 2019. "Direct and Hierarchical Models for Aggregating Spatially Dependent Catastrophe Risks" Risks 7, no. 2: 54. https://doi.org/10.3390/risks7020054
APA StyleWójcik, R., Liu, C. W., & Guin, J. (2019). Direct and Hierarchical Models for Aggregating Spatially Dependent Catastrophe Risks. Risks, 7(2), 54. https://doi.org/10.3390/risks7020054