Title of article :
An Application of Genetic Network Programming for Pricing of Basket Default Swaps (BDS)
Author/Authors :
Esfahanipour, A Department of Industrial Engineering & Management Systems - Amirkabir University of Technology, Tehran , Jahanbin, R Department of Industrial Engineering & Management Systems - Amirkabir University of Technology, Tehran
Abstract :
The credit derivative market has experienced a remarkable growth over the past decade.
As such, there is a growing interest in tools for pricing of the most prominent credit derivative, the
credit default swap (CDS). In this paper, we propose a heuristic algorithm for pricing of basket default
swaps (BDS). For this purpose, genetic network programming (GNP), which is one of the most recent
evolutionary methods with graph structure as a subgroup of machine learning methods, is applied to
assess basket default swap spreads. Here GNP is an alternative way to model the default correlation
structure among different reference entities in a basket default swap. In order to improve the efficiency of
the proposed algorithm, GNP with the vigorous connection (GNP-VC) is developed and used for the first
time in this paper. To implement our model, we consider a basket consisting of 25 entities of the CDX.
NA.IG.5Y index. We compare the heuristic results with the Monte Carlo ones and discuss the efficiency
of the proposed algorithm.The impact of vigorous connection on the performance of GNP is also reported.
Keywords :
credit default swap (CDS) , basket default swaps (BDS) , default correlation , genetic network programming(GNP) , genetic network programing with , vigorous connection (GNP-VC)
Journal title :
AUT Journal of Modeling and Simulation