Abstract

The mining and hedging of option volatility information are the core issues of stock option markets. This paper analyzes the relationship between option risk and expected return from the perspective of the underlying beta, and estimates the degree of correlation. As the assumptions of the capital asset pricing model and Black–Scholes model are not consistent with the actual situation in the financial market, we use applied statistical models to introduce kurtosis and skewness, and to introduce curvature and high-order-moment error terms to optimize the underlying beta model. We then develop a verification model for mining option risk and hedging by employing the modified underlying beta. We verify the hedging performance of the above model by choosing different market samples, such as the China, Hong Kong and US financial markets. The results show that the hedging performance of the optimized underlying beta model in the US market is most satisfactory, followed by the Hong Kong market and then the Chinese mainland market. Meanwhile, the hedging effect of the underlying beta model improved by curvature and high-order-moment error terms is superior to that of the model of the underlying beta adjusted by the kurtosis and skewness.

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