Simple simulation of diffusion bridges with application to likelihood inference for diffusions

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Simple simulation of diffusion bridges with application to likelihood inference for diffusions. / Bladt, Mogens; Sørensen, Michael.

I: Bernoulli, Bind 20, Nr. 2, 2014, s. 645-675.

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Harvard

Bladt, M & Sørensen, M 2014, 'Simple simulation of diffusion bridges with application to likelihood inference for diffusions', Bernoulli, bind 20, nr. 2, s. 645-675. https://doi.org/10.3150/12-BEJ501

APA

Bladt, M., & Sørensen, M. (2014). Simple simulation of diffusion bridges with application to likelihood inference for diffusions. Bernoulli, 20(2), 645-675. https://doi.org/10.3150/12-BEJ501

Vancouver

Bladt M, Sørensen M. Simple simulation of diffusion bridges with application to likelihood inference for diffusions. Bernoulli. 2014;20(2):645-675. https://doi.org/10.3150/12-BEJ501

Author

Bladt, Mogens ; Sørensen, Michael. / Simple simulation of diffusion bridges with application to likelihood inference for diffusions. I: Bernoulli. 2014 ; Bind 20, Nr. 2. s. 645-675.

Bibtex

@article{5297f7ed74c04e4bb7234d545df99ad4,
title = "Simple simulation of diffusion bridges with application to likelihood inference for diffusions",
abstract = "With a view to statistical inference for discretely observed diffusion models, we propose simple methods of simulating diffusion bridges, approximately and exactly. Diffusion bridge simulation plays a fundamental role in likelihood and Bayesian inference for diffusion processes. First a simple method of simulating approximate diffusion bridges is proposed and studied. Then these approximate bridges are used as proposal for an easily implemented Metropolis–Hastings algorithm that produces exact diffusion bridges. The new method utilizes time-reversibility properties of one-dimensional diffusions and is applicable to all one-dimensional diffusion processes with finite speed-measure. One advantage of the new approach is that simple simulation methods like the Milstein scheme can be applied to bridge simulation. Another advantage over previous bridge simulation methods is that the proposed method works well for diffusion bridges in long intervals because the computational complexity of the method is linear in the length of the interval. For ρ -mixing diffusions the approximate method is shown to be particularly accurate for long time intervals. In a simulation study, we investigate the accuracy and efficiency of the approximate method and compare it to exact simulation methods. In the study, our method provides a very good approximation to the distribution of a diffusion bridge for bridges that are likely to occur in applications to statistical inference. To illustrate the usefulness of the new method, we present an EM-algorithm for a discretely observed diffusion process. ",
author = "Mogens Bladt and Michael S{\o}rensen",
note = "Corrigendum: https://projecteuclid.org/euclid.bj/1605841242",
year = "2014",
doi = "10.3150/12-BEJ501",
language = "English",
volume = "20",
pages = "645--675",
journal = "Bernoulli",
issn = "1350-7265",
publisher = "International Statistical Institute",
number = "2",

}

RIS

TY - JOUR

T1 - Simple simulation of diffusion bridges with application to likelihood inference for diffusions

AU - Bladt, Mogens

AU - Sørensen, Michael

N1 - Corrigendum: https://projecteuclid.org/euclid.bj/1605841242

PY - 2014

Y1 - 2014

N2 - With a view to statistical inference for discretely observed diffusion models, we propose simple methods of simulating diffusion bridges, approximately and exactly. Diffusion bridge simulation plays a fundamental role in likelihood and Bayesian inference for diffusion processes. First a simple method of simulating approximate diffusion bridges is proposed and studied. Then these approximate bridges are used as proposal for an easily implemented Metropolis–Hastings algorithm that produces exact diffusion bridges. The new method utilizes time-reversibility properties of one-dimensional diffusions and is applicable to all one-dimensional diffusion processes with finite speed-measure. One advantage of the new approach is that simple simulation methods like the Milstein scheme can be applied to bridge simulation. Another advantage over previous bridge simulation methods is that the proposed method works well for diffusion bridges in long intervals because the computational complexity of the method is linear in the length of the interval. For ρ -mixing diffusions the approximate method is shown to be particularly accurate for long time intervals. In a simulation study, we investigate the accuracy and efficiency of the approximate method and compare it to exact simulation methods. In the study, our method provides a very good approximation to the distribution of a diffusion bridge for bridges that are likely to occur in applications to statistical inference. To illustrate the usefulness of the new method, we present an EM-algorithm for a discretely observed diffusion process.

AB - With a view to statistical inference for discretely observed diffusion models, we propose simple methods of simulating diffusion bridges, approximately and exactly. Diffusion bridge simulation plays a fundamental role in likelihood and Bayesian inference for diffusion processes. First a simple method of simulating approximate diffusion bridges is proposed and studied. Then these approximate bridges are used as proposal for an easily implemented Metropolis–Hastings algorithm that produces exact diffusion bridges. The new method utilizes time-reversibility properties of one-dimensional diffusions and is applicable to all one-dimensional diffusion processes with finite speed-measure. One advantage of the new approach is that simple simulation methods like the Milstein scheme can be applied to bridge simulation. Another advantage over previous bridge simulation methods is that the proposed method works well for diffusion bridges in long intervals because the computational complexity of the method is linear in the length of the interval. For ρ -mixing diffusions the approximate method is shown to be particularly accurate for long time intervals. In a simulation study, we investigate the accuracy and efficiency of the approximate method and compare it to exact simulation methods. In the study, our method provides a very good approximation to the distribution of a diffusion bridge for bridges that are likely to occur in applications to statistical inference. To illustrate the usefulness of the new method, we present an EM-algorithm for a discretely observed diffusion process.

U2 - 10.3150/12-BEJ501

DO - 10.3150/12-BEJ501

M3 - Journal article

VL - 20

SP - 645

EP - 675

JO - Bernoulli

JF - Bernoulli

SN - 1350-7265

IS - 2

ER -

ID: 129785095