
In this chapter, we consider volatility swap, variance swap and VIX future pricing under different stochastic volatility models and jump diffusion models which are commonly used in financial market. We use convexity correction approximation technique and Laplace transform method to evaluate volatility strikes and estimate VIX future prices. In empirical study, we use Markov chain Monte Carlo algorithm for model calibration based on S&P 500 historical data, evaluate the effect of adding jumps into asset price processes on volatility derivatives pricing, and compare the performance of different pricing approaches.
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FOS: Economics and business, Quantitative Finance - Mathematical Finance, 91B28, 60H35, 91B70, Mathematical Finance (q-fin.MF)
FOS: Economics and business, Quantitative Finance - Mathematical Finance, 91B28, 60H35, 91B70, Mathematical Finance (q-fin.MF)
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