A random forest based approach for predicting spreads in the primary catastrophe bond market
Makariou, Despoina, Barrieu, Pauline, Chen, Yining
We introduce a random forest approach to enable spreads' prediction in the primary catastrophe bond market. We investigate whether all information provided to investors in the offering circular prior to a new issuance is equally important in predicting its spread. The whole population of non-life catastrophe bonds issued from December 2009 to May 2018 is used. The random forest shows an impressive predictive power on unseen primary catastrophe bond data explaining 93% of the total variability. For comparison, linear regression, our benchmark model, has inferior predictive performance explaining only 47% of the total variability. All details provided in the offering circular are predictive of spread but in a varying degree. The stability of the results is studied. The usage of random forest can speed up investment decisions in the catastrophe bond industry.
Jan-28-2020
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- Asia > Taiwan (0.04)
- North America
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- United States
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- Rhode Island > Providence County
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- Research Report > New Finding (0.93)
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