This work generalizes the subdiffusive Black-Scholes model by introducing the variable exponent in order to provide adequate descriptions for the option pricing, where the variable exponent may account for the variation of the memory property. In addition to standard nonlinear-to-linear transformation, we apply a further spatial-temporal transformation to convert the model to a more tractable form in order to circumvent the difficulties caused by the ``non-positive, non-monotonic'' variable-exponent memory kernel. An interesting phenomenon is that the spatial transformation not only eliminates the advection term but naturally turns the original noncoercive spatial operator into a coercive one due to the specific structure of the Black-Scholes model, which thus avoids imposing constraints on coefficients. Then we perform numerical analysis for both the semi-discrete and fully discrete schemes to support numerical simulation. Numerical experiments are carried out to substantiate the theoretical results.
翻译:本研究通过引入变指数推广了亚扩散Black-Scholes模型,旨在为期权定价提供更准确的描述框架,其中变指数可用于刻画记忆特性的时变特征。除了标准的非线性-线性变换外,我们进一步采用时空变换将模型转化为更易处理的形式,以规避“非正、非单调”变指数记忆核带来的理论困难。一个有趣的现象是:由于Black-Scholes模型特有的结构,空间变换不仅消除了平流项,还自然地将原始非强制空间算子转化为强制算子,从而避免了对系数施加约束条件。随后我们对半离散与全离散格式进行了数值分析以支撑数值模拟。通过数值实验验证了理论结果的可靠性。