On Calibration Neural Networks for extracting implied information from American options

01/31/2020
by   Shuaiqiang Liu, et al.
0

Extracting implied information, like volatility and/or dividend, from observed option prices is a challenging task when dealing with American options, because of the computational costs needed to solve the corresponding mathematical problem many thousands of times. We will employ a data-driven machine learning approach to estimate the Black-Scholes implied volatility and the dividend yield for American options in a fast and robust way. To determine the implied volatility, the inverse function is approximated by an artificial neural network on the computational domain of interest, which decouples the offline (training) and online (prediction) phases and thus eliminates the need for an iterative process. For the implied dividend yield, we formulate the inverse problem as a calibration problem and determine simultaneously the implied volatility and dividend yield. For this, a generic and robust calibration framework, the Calibration Neural Network (CaNN), is introduced to estimate multiple parameters. It is shown that machine learning can be used as an efficient numerical technique to extract implied information from American options.

READ FULL TEXT
research
07/31/2015

Efficient and robust calibration of the Heston option pricing model for American options using an improved Cuckoo Search Algorithm

In this paper an improved Cuckoo Search Algorithm is developed to allow ...
research
03/22/2021

Valuing Exotic Options and Estimating Model Risk

A common approach to valuing exotic options involves choosing a model an...
research
04/23/2019

A neural network-based framework for financial model calibration

A data-driven approach called CaNN (Calibration Neural Network) is propo...
research
07/06/2022

Unbiasing and robustifying implied volatility calibration in a cryptocurrency market with large bid-ask spreads and missing quotes

We design a novel calibration procedure that is designed to handle the s...
research
04/04/2023

eSSVI Surface Calibration

In this work I test two calibration algorithms for the eSSVI volatility ...
research
04/29/2019

Gated deep neural networks for implied volatility surfaces

In this paper, we propose a gated deep neural network model to predict i...
research
12/20/2022

Beyond Surrogate Modeling: Learning the Local Volatility Via Shape Constraints

We explore the abilities of two machine learning approaches for no-arbit...

Please sign up or login with your details

Forgot password? Click here to reset