Asymptotic Distributions of the Least Squares Estimator for Diffusion Processes
The asymptotic distributions of the least squares estimator of the mean reversion parameter (κ) are developed in a general class of diffusion models under three sampling schemes, namely, ongspan, in-fill and the combination of long-span and in-fill. The models have an affine structure in the drift f...
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sg-smu-ink.soe_research-22382019-04-21T00:45:08Z Asymptotic Distributions of the Least Squares Estimator for Diffusion Processes ZHOU, Qiankun YU, Jun The asymptotic distributions of the least squares estimator of the mean reversion parameter (κ) are developed in a general class of diffusion models under three sampling schemes, namely, ongspan, in-fill and the combination of long-span and in-fill. The models have an affine structure in the drift function, but allow for nonlinearity in the diffusion function. The limiting distributions are quite different under the alternative sampling schemes. In particular, the in-fill limiting distribution is non-standard and depends on the initial condition and the time span whereas the other two are Gaussian. Moreover, while the other two distributions are discontinuous at κ = 0, the in-fill distribution is continuous in κ. This property provides an answer to the Bayesian criticism to the unit root asymptotics. Monte Carlo simulations suggest that the in-fill asymptotic distribution provides a more accurate approximation to the finite sample distribution than the other two distributions in empirically realistic settings. The empirical application using the U.S. Federal fund rates highlights the difference in statistical inference based on the alternative asymptotic distributions and suggests strong evidence of a unit root in the data. 2010-10-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/soe_research/1239 https://ink.library.smu.edu.sg/context/soe_research/article/2238/viewcontent/OU07.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Economics eng Institutional Knowledge at Singapore Management University Vasicek Model One-factor Model Mean Reversion In-fill Asymptotics Long-span Asymptotics Unit Root Test Econometrics |
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Vasicek Model One-factor Model Mean Reversion In-fill Asymptotics Long-span Asymptotics Unit Root Test Econometrics ZHOU, Qiankun YU, Jun Asymptotic Distributions of the Least Squares Estimator for Diffusion Processes |
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The asymptotic distributions of the least squares estimator of the mean reversion parameter (κ) are developed in a general class of diffusion models under three sampling schemes, namely, ongspan, in-fill and the combination of long-span and in-fill. The models have an affine structure in the drift function, but allow for nonlinearity in the diffusion function. The limiting distributions are quite different under the alternative sampling schemes. In particular, the in-fill limiting distribution is non-standard and depends on the initial condition and the time span whereas the other two are Gaussian. Moreover, while the other two distributions are discontinuous at κ = 0, the in-fill distribution is continuous in κ. This property provides an answer to the Bayesian criticism to the unit root asymptotics. Monte Carlo simulations suggest that the in-fill asymptotic distribution provides a more accurate approximation to the finite sample distribution than the other two distributions in empirically realistic settings. The empirical application using the U.S. Federal fund rates highlights the difference in statistical inference based on the alternative asymptotic distributions and suggests strong evidence of a unit root in the data. |
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ZHOU, Qiankun YU, Jun |
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ZHOU, Qiankun YU, Jun |
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ZHOU, Qiankun |
title |
Asymptotic Distributions of the Least Squares Estimator for Diffusion Processes |
title_short |
Asymptotic Distributions of the Least Squares Estimator for Diffusion Processes |
title_full |
Asymptotic Distributions of the Least Squares Estimator for Diffusion Processes |
title_fullStr |
Asymptotic Distributions of the Least Squares Estimator for Diffusion Processes |
title_full_unstemmed |
Asymptotic Distributions of the Least Squares Estimator for Diffusion Processes |
title_sort |
asymptotic distributions of the least squares estimator for diffusion processes |
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Institutional Knowledge at Singapore Management University |
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2010 |
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https://ink.library.smu.edu.sg/soe_research/1239 https://ink.library.smu.edu.sg/context/soe_research/article/2238/viewcontent/OU07.pdf |
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