Replication Data for: Worst-Case Higher Moment Risk Measure: Addressing Distributional Shifts and Procyclicality

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Castro Iragorri, Carlos;Gómez, Fabio;Quiceno, Nancy

Description

This paper addresses the inherent procyclicality in widely adopted financial risk measures, such as expected shortfall (ES). We propose an innovative approach utilizing the worst-case higher moment (HM) risk measure, which offers a robust solution to distributional shifts by incorporating adaptive features. Empirical results using historical S returns indicate that worst-case HM risk measures significantly reduce the underestimation of risk and provide more stable risk assessments throughout the financial cycle compared to traditional ES predictions. These results suggest that worst-case HM risk measures represent a viable alternative to regulatory add-ons for stress testing and procyclicality mitigation in financial risk management.

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Metrics

Dataset Index

2.4

FAIR Score

96%

Citations

0

Mentions

0

Metrics Over Time

Publication Details

DOI

Publisher

Universidad del Rosario

Assigned Domain

Subfield

Food Science

Field

Agricultural and Biological Sciences

Domain

Life Sciences

Confidence Score

90%

Source

Open Alex

Normalization Factors

FT

13.46

CTw

1.00

MTw

1.00