Title of article :
Parametric option pricing: A divide-and-conquer approach
Author/Authors :
Nikola Gradojevic، نويسنده , , Nikola and Kukolj، نويسنده , , Dragan، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2011
Abstract :
Non-parametric option pricing models, such as artificial neural networks, are often found to outperform their parametric counterparts in empirical option pricing exercises. In this context, non-parametric models are viewed as more flexible and amenable to adaptive learning. However, the main drawback of non-parametric approaches is their lack of stability, which is detrimental to out-of-sample performance. This is the key reason why one may prefer a parsimonious parametric model. This paper proposes a parametric Takagi–Sugeno–Kang (TSK) fuzzy rule-based option pricing model that requires only a small number of rules to describe highly complex non-linear functions. The findings for this data-driven approach indicate that the TSK model presents a robust option pricing tool that is superior to an array of well-known parametric models from the literature. In addition, its predictive performance is consistently no worse than that of a non-parametric feedforward neural network model.
Keywords :
Option Pricing , Parametric methods , Fuzzy Logic , Non-parametric methods
Journal title :
Physica D Nonlinear Phenomena
Journal title :
Physica D Nonlinear Phenomena