Option pricing from a Bayesian perspective using the Dirichlet process.

There exist a wide variety of models for the pricing of derivative securities such as call and put options. This thesis introduces an alternative option pricing methodology based on a Monte Carlo simulation of the Dirichlet process. The model is constructed in a Bayesian framework, using the propert...

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Bibliographic Details
Main Author: Bédard, Tierry.
Other Authors: Dabrowski, Andre
Format: Others
Published: University of Ottawa (Canada) 2009
Subjects:
Online Access:http://hdl.handle.net/10393/9257
http://dx.doi.org/10.20381/ruor-16223
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spelling ndltd-uottawa.ca-oai-ruor.uottawa.ca-10393-92572018-01-05T19:05:34Z Option pricing from a Bayesian perspective using the Dirichlet process. Bédard, Tierry. Dabrowski, Andre, Mathematics. There exist a wide variety of models for the pricing of derivative securities such as call and put options. This thesis introduces an alternative option pricing methodology based on a Monte Carlo simulation of the Dirichlet process. The model is constructed in a Bayesian framework, using the properties initially described by Ferguson [10, 11]. Given historical stock prices up to the present, we simulate various sample paths for future stock prices. This procedure is conducted under the hypothesis that the prior distribution of the stock returns has a Dirichlet process structure. The predicted option prices are then computed by averaging the option prices obtained for each simulated sample path. A considerable advantage of this model is that random draws are sampled from a mixed distribution which consists of a prior guess and the empirical process based on the initial random sample of stock returns. The methodology is applied to various examples throughout this thesis. The results are compared with some existing models, including exponential Brownian motion and the Black-Scholes option pricing formula. 2009-03-23T18:26:34Z 2009-03-23T18:26:34Z 2001 2001 Thesis Source: Masters Abstracts International, Volume: 40-05, page: 1246. 9780612660076 http://hdl.handle.net/10393/9257 http://dx.doi.org/10.20381/ruor-16223 137 p. University of Ottawa (Canada)
collection NDLTD
format Others
sources NDLTD
topic Mathematics.
spellingShingle Mathematics.
Bédard, Tierry.
Option pricing from a Bayesian perspective using the Dirichlet process.
description There exist a wide variety of models for the pricing of derivative securities such as call and put options. This thesis introduces an alternative option pricing methodology based on a Monte Carlo simulation of the Dirichlet process. The model is constructed in a Bayesian framework, using the properties initially described by Ferguson [10, 11]. Given historical stock prices up to the present, we simulate various sample paths for future stock prices. This procedure is conducted under the hypothesis that the prior distribution of the stock returns has a Dirichlet process structure. The predicted option prices are then computed by averaging the option prices obtained for each simulated sample path. A considerable advantage of this model is that random draws are sampled from a mixed distribution which consists of a prior guess and the empirical process based on the initial random sample of stock returns. The methodology is applied to various examples throughout this thesis. The results are compared with some existing models, including exponential Brownian motion and the Black-Scholes option pricing formula.
author2 Dabrowski, Andre,
author_facet Dabrowski, Andre,
Bédard, Tierry.
author Bédard, Tierry.
author_sort Bédard, Tierry.
title Option pricing from a Bayesian perspective using the Dirichlet process.
title_short Option pricing from a Bayesian perspective using the Dirichlet process.
title_full Option pricing from a Bayesian perspective using the Dirichlet process.
title_fullStr Option pricing from a Bayesian perspective using the Dirichlet process.
title_full_unstemmed Option pricing from a Bayesian perspective using the Dirichlet process.
title_sort option pricing from a bayesian perspective using the dirichlet process.
publisher University of Ottawa (Canada)
publishDate 2009
url http://hdl.handle.net/10393/9257
http://dx.doi.org/10.20381/ruor-16223
work_keys_str_mv AT bedardtierry optionpricingfromabayesianperspectiveusingthedirichletprocess
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