首页> 外文会议>International Symposium on Neural Networks(ISNN 2006) pt.3; 20060528-0601; Chengdu(CN) >Local Volatility Function Approximation Using Reconstructed Radial Basis Function Networks
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Local Volatility Function Approximation Using Reconstructed Radial Basis Function Networks

机译:重构径向基函数网络的局部波动率函数逼近

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摘要

Modelling volatility smile is very important in financial practice for pricing and hedging derivatives. In this paper, a novel learning method to approximate a local volatility function from a finite market data set is proposed. The proposed method trains a RBF network with fewer volatility data and finds an optimized network through option pricing error minimization. Numerical experiments are conducted on S&P 500 call option market data to illustrate a local volatility surface estimated by the method.
机译:在金融实践中,对波动率微笑进行建模对于定价和对冲衍生品非常重要。本文提出了一种新的学习方法,可以从有限的市场数据集中逼近局部波动率函数。所提出的方法训练具有较少波动性数据的RBF网络,并通过最小化期权定价误差来找到优化的网络。在S&P 500看涨期权市场数据上进行了数值实验,以说明通过该方法估算的局部波动面。

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