Building and Testing Yield Curve Generators for P&C Insurance
Gary Venter, Kailan Shang

TL;DR
This paper develops methods to test yield curve scenario generators for property-casualty insurance, focusing on their ability to produce realistic interest rate evolutions relevant for insurers' risk management.
Contribution
It introduces testing techniques tailored for P&C insurance yield curve models, addressing the unique market behaviors and model validation challenges.
Findings
Proposes methods for evaluating scenario generator accuracy
Highlights the importance of distributional property testing
Adapts tests to current market interest rate patterns
Abstract
Interest-rate risk is a key factor for property-casualty insurer capital. P&C companies tend to be highly leveraged, with bond holdings much greater than capital. For GAAP capital, bonds are marked to market but liabilities are not, so shifts in the yield curve can have a significant impact on capital. Yield-curve scenario generators are one approach to quantifying this risk. They produce many future simulated evolutions of the yield curve, which can be used to quantify the probabilities of bond-value changes that would result from various maturity-mix strategies. Some of these generators are provided as black-box models where the user gets only the projected scenarios. One focus of this paper is to provide methods for testing generated scenarios from such models by comparing to known distributional properties of yield curves. P&C insurers hold bonds to maturity and manage cash-flow…
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Taxonomy
TopicsInsurance and Financial Risk Management · Insurance, Mortality, Demography, Risk Management · Probability and Risk Models
