A random forest based approach for predicting spreads in the primary catastrophe bond market.
Journal
Insurance: Mathematics and Economics
ISSN
0167-6687
Type
journal article
Date Issued
2021-07-30
Author(s)
Abstract
We introduce a random forest approach to enable spreads’ prediction in the primary catastrophe bond market. In a purely predictive framework, we assess the importance of catastrophe spread predictors using permutation and minimal depth methods. The whole population of non-life catastrophe bonds issued from December 2009 to May 2018 is used. We find that random forest has at least as good prediction performance as our benchmark-linear regression in the temporal context, and better prediction performance in the non-temporal one. Random forest also performs better than the benchmark when multiple predictors are excluded in accordance with the importance rankings or at random, which indicates that random forest extracts information from existing predictors more effectively and captures interactions better without the need to specify them. The results of random forest, in terms of prediction accuracy and the minimal depth importance are stable. There is only a small divergence between the drivers of catastrophe bond spread in the predictive versus explanatory framework. We believe that the usage of random forest can speed up investment decisions in the catastrophe bond industry both for would-be issuers and investors.
Language
English
Keywords
Catastrophe bond pricing
Interactions
Machine learning in insurance
Minimal depth importance
Permutation importance
Primary market spread prediction
Random forest
Stability
HSG Classification
contribution to scientific community
Refereed
Yes
Publisher
Elsevier
Division(s)
Contact Email Address
despoina.makariou@unisg.ch
Eprints ID
268232
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