Essays on long memory time series and panel models

This dissertation studies different long memory models. The first chapter considers a time series regression model where both the regressors and error term are locally stationary long memory processes with time-varying memory parameters, and the regression coefficients are also allowed to be time-va...

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Main Author: KE, Shuyao
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Language:English
Published: Institutional Knowledge at Singapore Management University 2022
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Online Access:https://ink.library.smu.edu.sg/etd_coll/430
https://ink.library.smu.edu.sg/context/etd_coll/article/1428/viewcontent/GPEC_AY2017_PhD_Ke_Shuyao.pdf
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spelling sg-smu-ink.etd_coll-14282022-09-22T09:41:53Z Essays on long memory time series and panel models KE, Shuyao This dissertation studies different long memory models. The first chapter considers a time series regression model where both the regressors and error term are locally stationary long memory processes with time-varying memory parameters, and the regression coefficients are also allowed to be time-varying. We consider a frequency-domain least squares estimator with kernelized discrete Fourier transform and derive its pointwise asymptotic normality and uniform consistency. A specification test on the constancy of coefficients is provided. The second chapter studies a linear regression panel data model with interactive fixed effects where the regressors, factors and idiosyncratic error terms are all stationary but with potential long memory. The setup involves a new factor model formulation for which weakly dependent regressors, factors and innovations are embedded as a special case. Standard methods based on principal component decomposition and least squares estimation, as in Bai (2009), are found to suffer bias correction failure because the order of magnitude of the bias is determined in a complex manner by the memory parameters. To cope with this failure and to provide a simple implementable estimation procedure, frequency domain least squares estimation is proposed. The limit distribution of this frequency domain approach is established and a hybrid selection method is developed to determine the number of factors. The third chapter estimates the memory parameters and test them against spurious long memory of the latent factors in a linear regression model with interactive fixed effects, based on the estimated discrete Fourier transform of the factors. The same asymptotic properties hold as if we use the infeasible true factors for both the memory estimator and the test. This result illustrates how the frequency domain least squares estimator can be applied to further inference other than the regression coefficients. 2022-06-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/etd_coll/430 https://ink.library.smu.edu.sg/context/etd_coll/article/1428/viewcontent/GPEC_AY2017_PhD_Ke_Shuyao.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Dissertations and Theses Collection (Open Access) eng Institutional Knowledge at Singapore Management University long memory time-varying regression factor model principal component analysis frequency domain estimation Econometrics
institution Singapore Management University
building SMU Libraries
continent Asia
country Singapore
Singapore
content_provider SMU Libraries
collection InK@SMU
language English
topic long memory
time-varying regression
factor model
principal component analysis
frequency domain estimation
Econometrics
spellingShingle long memory
time-varying regression
factor model
principal component analysis
frequency domain estimation
Econometrics
KE, Shuyao
Essays on long memory time series and panel models
description This dissertation studies different long memory models. The first chapter considers a time series regression model where both the regressors and error term are locally stationary long memory processes with time-varying memory parameters, and the regression coefficients are also allowed to be time-varying. We consider a frequency-domain least squares estimator with kernelized discrete Fourier transform and derive its pointwise asymptotic normality and uniform consistency. A specification test on the constancy of coefficients is provided. The second chapter studies a linear regression panel data model with interactive fixed effects where the regressors, factors and idiosyncratic error terms are all stationary but with potential long memory. The setup involves a new factor model formulation for which weakly dependent regressors, factors and innovations are embedded as a special case. Standard methods based on principal component decomposition and least squares estimation, as in Bai (2009), are found to suffer bias correction failure because the order of magnitude of the bias is determined in a complex manner by the memory parameters. To cope with this failure and to provide a simple implementable estimation procedure, frequency domain least squares estimation is proposed. The limit distribution of this frequency domain approach is established and a hybrid selection method is developed to determine the number of factors. The third chapter estimates the memory parameters and test them against spurious long memory of the latent factors in a linear regression model with interactive fixed effects, based on the estimated discrete Fourier transform of the factors. The same asymptotic properties hold as if we use the infeasible true factors for both the memory estimator and the test. This result illustrates how the frequency domain least squares estimator can be applied to further inference other than the regression coefficients.
format text
author KE, Shuyao
author_facet KE, Shuyao
author_sort KE, Shuyao
title Essays on long memory time series and panel models
title_short Essays on long memory time series and panel models
title_full Essays on long memory time series and panel models
title_fullStr Essays on long memory time series and panel models
title_full_unstemmed Essays on long memory time series and panel models
title_sort essays on long memory time series and panel models
publisher Institutional Knowledge at Singapore Management University
publishDate 2022
url https://ink.library.smu.edu.sg/etd_coll/430
https://ink.library.smu.edu.sg/context/etd_coll/article/1428/viewcontent/GPEC_AY2017_PhD_Ke_Shuyao.pdf
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