Abstract

Insurance companies issue guarantees that need to be valued according to the market expectations. By calibrating option pricing models to the available implied volatility surfaces, one deals with the so-called risk-neutral measure Q , which can be used to generate market consistent values for these guarantees. For asset liability management, insurers also need future values of these guarantees. Next to that, new regulations require insurance companies to value their positions on a one-year horizon. As the option prices at t = 1 are unknown, it is common practice to assume that the parameters of these option pricing models are constant, i.e., the calibrated parameters from time t = 0 are also used to value the guarantees at t = 1 . However, it is well-known that the parameters are not constant and may depend on the state of the market which evolves under the real-world measure P . In this paper, we propose improved regression models that, given a set of market variables such as the VIX index and risk-free interest rates, estimate the calibrated parameters. When the market variables are included in a real-world simulation, one is able to assess the calibrated parameters (and consequently the implied volatility surface) in line with the simulated state of the market. By performing a regression, we are able to predict out-of-sample implied volatility surfaces accurately. Moreover, the impact on the Solvency Capital Requirement has been evaluated for different points in time. The impact depends on the initial state of the market and may vary between −46% and +52%.

Highlights

  • Liabilities of insurance companies depend on the fair value of the outstanding claims that typically involve guarantees

  • The market consistent value of these guarantees is defined under the risk-neutral measure Q, i.e., they are computed with pricing formulas that agree on the current implied volatility surfaces

  • The research in this paper was motivated by the open question of how to value future guarantees that are issued by insurance companies

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Summary

Introduction

Liabilities of insurance companies depend on the fair value of the outstanding claims that typically involve guarantees (that are called embedded options). Despite some relevant research on predicting the implied volatility surfaces (see, e.g., Cont et al (2002), Mixon (2002) and Audrino and Colangelo (2010)), it is common practice to use option pricing models that are only calibrated at time t = 0, thereby assuming that the risk-neutral measure is independent of the state of the market (see, for example, Bauer et al (2010) and Devineau and Loisel (2009)). We investigate the impact of relaxing the assumption that the risk-neutral measure is considered to be independent of the state of the market and develop the so-called VIX Heston model, which depends on the current and on simulated implied volatilities.

Solvency Capital Requirement
Dynamic Stochastic Volatility Model
Heston Model
VIX Heston Model
Hedge Test
Hedge Test Experiments
Simulated Market
Empirical Market
Data and Calibration
SCR Impact Study
Guaranteed Minimum Accumulation Benefit
Findings
Discussion on Impact
Conclusions

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