采用期权及标的资产价格数据,基于离散时间EGARCH模型和连续时间GARCH扩散模型分别估计了客观与风险中性密度,进而推导了经验定价核.在此基础上,基于等级依赖期望效用模型,在标准的效应函数形式下构建了相应的概率权重函数.采用香港恒生指数及其指数权证价格数据进行实证研究,结果表明:(1)经验定价核不是单调递减的,而是展现出驼峰(非单调性),即"定价核之谜";(2)经验概率权重函数展现S型,表明市场投资者低估尾部概率事件,高估中、高概率事件;(3)"定价核之谜"可以由具有标准效用函数与S型概率权重函数的等级依赖期望效用模型解释。
The investor behavior has always been in focus in the literature on financial economics.Naturally,it involves the pricing kernel,which also known as the stochastic discount factor.In standard economic theory,the pricing kernel is a monotonically decreasing function of the market return,corresponds to a concave utility function and investor risk aversion.However,there has been a lot of discussion about the reliability of this theory.Many recent empirical studies based on index option data have provide evidence of non-monotonically decreasing pricing kernel.The non-monotonicity of empirical pricing kernel estimates has become known as the"pricing kernel puzzle"or"risk aversion puzzle".Numerous attempts have been undertaken to explain the reason for the"pricing kernel puzzle"from different perspectives,including investor’s heterogeneous beliefs,misspecification of the underlying state space,ambiguity aversion,rankdependent expected utility,incomplete market,statistical artifact,investor’s sentiment,etc.In this paper we consider a pricing kernel based on the rank-dependent expected utility model with a probability weighting function.The rank-dependent expected utility model was first introduced by Quiggin(1982),and further developed by Yaari(1987)and Allais(1988).We show that this model is consistent with several features of the empirical pricing kernel estimated from index options and that the data imply the shape of probability weights with the emphasis on tail events.Methods:In the last decades,there is a large literature on the estimation of the pricing kernel.A number of earlier papers estimate the pricing kernel using aggregate consumption data,problems with imprecise measurement of aggregate consumption can weaken the empirical results of these papers.Recently,many authors have used the historical underlying asset and option prices data to estimate the pricing kernel.This approach avoids the use of aggregate consumption data and can obtain more reliable results.Based on the option