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Product Markovian quantization of an R^d -valued Euler scheme of a diffusion process with applications to finance

Abstract

We introduce a new approach to quantize the Euler scheme of an Rd\mathbb{R}^d-valued diffusion process. This method is based on a Markovian and componentwise product quantization and allows us, from a numerical point of view, to speak of {\em fast online quantization} in dimension greater than one since the product quantization of the Euler scheme of the diffusion process and its companion weights and transition probabilities may be computed quite instantaneously. We show that the resulting quantization process is a Markov chain, then, we compute the associated companion weights and transition probabilities from (semi-) closed formulas. From the analytical point of view, we show that the induced quantization errors at the kk-th discretization step tkt_k is a cumulative of the marginal quantization error up to time tkt_k. Numerical experiments are performed for the pricing of a Basket call option, for the pricing of a European call option in a Heston model and for the approximation of the solution of backward stochastic differential equations to show the performances of the method

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    Last time updated on 07/05/2019