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On stochatic approximation and option pricing
We consider almost sure convergence rates of averaged linear stochastic approximation algorithms, when applied to data with triangular dependence structure and heavy tails. We find that when the data is replaced by its running average in the algorithm, convergence may be faster. We then obtain rates of convergence of price estimates in the context of American option pricing via a dynamic programming algorithm with stochastic approximation. From a methodological point of view, our results show that using averaged data in the pricing algorithm leads to speeds of convergence that are more robust to the choice of parameters.
Date and Time
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Co-auteurs (non y compris vous-même)
Michael A. Kouritzin
University of Alberta
Langue de la présentation orale
Anglais
Langue des supports visuels
Anglais

Speaker

Edit Name Primary Affiliation
Anne Mackay Université de Sherbrooke