Imputation, Estimation and Missing Data in Finance

Suppose <em>X</em> is a diffusion process, possibly multivariate, and suppose that there are various segments of the components of <em>X</em> that are missing. This happens, for example, if <em>X</em> is the price of various assets and these prices are only obs...

Full description

Bibliographic Details
Main Author: DiCesare, Giuseppe
Format: Others
Language:en
Published: University of Waterloo 2007
Subjects:
Online Access:http://hdl.handle.net/10012/2920
id ndltd-LACETR-oai-collectionscanada.gc.ca-OWTU.10012-2920
record_format oai_dc
spelling ndltd-LACETR-oai-collectionscanada.gc.ca-OWTU.10012-29202013-10-04T04:07:47ZDiCesare, Giuseppe2007-05-08T14:00:44Z2007-05-08T14:00:44Z20062006http://hdl.handle.net/10012/2920Suppose <em>X</em> is a diffusion process, possibly multivariate, and suppose that there are various segments of the components of <em>X</em> that are missing. This happens, for example, if <em>X</em> is the price of various assets and these prices are only observed at specific discrete trading times. Imputation (or conditional simulation) of the missing pieces of the sample paths of <em>X</em> is discussed in several settings. When <em>X</em> is a Brownian motion the conditioned process is a tied down Brownian motion or a Brownian bridge process. In the special case of Gaussian stochastic processes the problem is simplified since the conditional finite dimensional distributions of the process are multivariate Normal. For more general diffusion processes, including those with jump components, an acceptance-rejection simulation algorithm is introduced which enables one to sample from the exact conditional distribution without appealing to approximate time step methods such as the popular Euler or Milstein schemes. The method is referred to as <em>pathwise imputation</em>. Its practical implementation relies only on the basic elements of simulation while its theoretical justification depends on the pathwise properties of stochastic processes and in particular Girsanov's theorem. The method allows for the complete characterization of the bridge paths of complicated diffusions using only Brownian bridge interpolation. The imputation methods discussed are applied to estimation, variance reduction and exotic option pricing.application/pdf1217763 bytesapplication/pdfenUniversity of WaterlooCopyright: 2006, DiCesare, Giuseppe. All rights reserved.Statisticsimputationestimationsimulationdiffusionsfinanceoption pricingImputation, Estimation and Missing Data in FinanceThesis or DissertationStatistics and Actuarial Science (Statistics)Doctor of Philosophy
collection NDLTD
language en
format Others
sources NDLTD
topic Statistics
imputation
estimation
simulation
diffusions
finance
option pricing
spellingShingle Statistics
imputation
estimation
simulation
diffusions
finance
option pricing
DiCesare, Giuseppe
Imputation, Estimation and Missing Data in Finance
description Suppose <em>X</em> is a diffusion process, possibly multivariate, and suppose that there are various segments of the components of <em>X</em> that are missing. This happens, for example, if <em>X</em> is the price of various assets and these prices are only observed at specific discrete trading times. Imputation (or conditional simulation) of the missing pieces of the sample paths of <em>X</em> is discussed in several settings. When <em>X</em> is a Brownian motion the conditioned process is a tied down Brownian motion or a Brownian bridge process. In the special case of Gaussian stochastic processes the problem is simplified since the conditional finite dimensional distributions of the process are multivariate Normal. For more general diffusion processes, including those with jump components, an acceptance-rejection simulation algorithm is introduced which enables one to sample from the exact conditional distribution without appealing to approximate time step methods such as the popular Euler or Milstein schemes. The method is referred to as <em>pathwise imputation</em>. Its practical implementation relies only on the basic elements of simulation while its theoretical justification depends on the pathwise properties of stochastic processes and in particular Girsanov's theorem. The method allows for the complete characterization of the bridge paths of complicated diffusions using only Brownian bridge interpolation. The imputation methods discussed are applied to estimation, variance reduction and exotic option pricing.
author DiCesare, Giuseppe
author_facet DiCesare, Giuseppe
author_sort DiCesare, Giuseppe
title Imputation, Estimation and Missing Data in Finance
title_short Imputation, Estimation and Missing Data in Finance
title_full Imputation, Estimation and Missing Data in Finance
title_fullStr Imputation, Estimation and Missing Data in Finance
title_full_unstemmed Imputation, Estimation and Missing Data in Finance
title_sort imputation, estimation and missing data in finance
publisher University of Waterloo
publishDate 2007
url http://hdl.handle.net/10012/2920
work_keys_str_mv AT dicesaregiuseppe imputationestimationandmissingdatainfinance
_version_ 1716599659729780736