Redirigiendo al acceso original de articulo en 18 segundos...
ARTÍCULO
TITULO

Clustering and Classification in Option Pricing

Nikola Gradojevic    
Dragan Kukolj    
Ramazan Gencay    

Resumen

This paper reviews the recent option pricing literature and investigates how clustering and classification can assist option pricing models. Specifically, we consider non-parametric modular neural network (MNN) models to price the S&P-500 European call options. The focus is on decomposing and classifying options data into a number of sub-models across moneyness and maturity ranges that are processed individually. The fuzzy learning vector quantization (FLVQ) algorithm we propose generates decision regions (i.e., option classes) divided by ?intelligent? classification boundaries. Such an approach improves generalization properties of the MNN model and thereby increases its pricing accuracy.

PÁGINAS
pp. 109 - 128
MATERIAS
ECONOMÍA
REVISTAS SIMILARES

 Artículos similares