Some Contributions to Sequential Monte Carlo Methods for Option Pricing
Deborshee Sen, Ajay Jasra, Yan Zhou

TL;DR
This paper demonstrates how Sequential Monte Carlo methods can significantly improve option pricing accuracy by constructing a sequence of artificial target densities, with applications to barrier options and TARNs.
Contribution
It introduces a novel SMC approach that approximates the optimal importance sampling distribution using a sequence of weighting functions for better option pricing.
Findings
SMC methods outperform standard Monte Carlo in option pricing
Unbiasedness of the SMC estimator is proven
Applications to barrier options and TARNs show practical effectiveness
Abstract
Pricing options is an important problem in financial engineering. In many scenarios of practical interest, financial option prices associated to an underlying asset reduces to computing an expectation w.r.t.~a diffusion process. In general, these expectations cannot be calculated analytically, and one way to approximate these quantities is via the Monte Carlo method; Monte Carlo methods have been used to price options since at least the 1970's. It has been seen in Del Moral, P. \& Shevchenko, P.V. (2014) `Valuation of barrier options using Sequential Monte Carlo' and Jasra, A. \& Del Moral, P. (2011) `Sequential Monte Carlo for option pricing' that Sequential Monte Carlo (SMC) methods are a natural tool to apply in this context and can vastly improve over standard Monte Carlo. In this article, in a similar spirit to Del Moral, P. \& Shevchenko, P.V. (2014) `Valuation of barrier options…
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Taxonomy
TopicsStochastic processes and financial applications · Financial Risk and Volatility Modeling · Mathematical Approximation and Integration
