Three essays on nonstationary time series econometrics

This dissertation comprises three papers that separately study different nonstationary time series models. The first paper, titled as "The Grid Bootstrap for Continuous Time Models", is a joint work with Professor Jun Yu and Professor Weilin Xiao. It considers the grid bootstrap for constr...

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Main Author: LUI, Yiu Lim
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Language:English
Published: Institutional Knowledge at Singapore Management University 2020
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Online Access:https://ink.library.smu.edu.sg/etd_coll/288
https://ink.library.smu.edu.sg/cgi/viewcontent.cgi?article=1285&context=etd_coll
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spelling sg-smu-ink.etd_coll-12852020-08-20T06:31:11Z Three essays on nonstationary time series econometrics LUI, Yiu Lim This dissertation comprises three papers that separately study different nonstationary time series models. The first paper, titled as "The Grid Bootstrap for Continuous Time Models", is a joint work with Professor Jun Yu and Professor Weilin Xiao. It considers the grid bootstrap for constructing confidence intervals for the persistence parameter in a class of continuous-time models driven by a Lévy process. Its asymptotic validity is discussed under the assumption that the sampling interval (h) shrinks to zero, the time span (N) goes to infinity or both. Its improvement over the in-fill asymptotic theory is achieved by expanding the coefficient-based statistic around its in-fill asymptotic distribution which is non-pivotal and depends on the initial condition. Monte Carlo studies show that the grid bootstrap method performs better than the in-fill asymptotic theory and much better than the long-span asymptotic theory. Empirical applications to U.S. interest rate data and volatility data suggest significant differences between the bootstrap confidence intervals and the confidence intervals obtained from the in-fill and long-span asymptotic distributions. The second paper, "Mildly Explosive Autoregression with Anti-persistent Errors" is another joint work with Professor Yu and Professor Xiao. It studies a mildly explosive autoregression model with Anti-persistent Errors. An asymptotic distribution is derived for the least squares (LS) estimate of a first-order autoregression with a mildly explosive root and anti-persistent errors. While the sample moments depend on the Hurst parameter asymptotically, the Cauchy limiting distribution theory remains valid for the LS estimates in the model without intercept and a model with an asymptotically negligible intercept. Monte Carlo studies are designed to check the precision of the Cauchy distribution in finite samples. An empirical study based on the monthly NASDAQ index highlights the usefulness of the model and the new limiting distribution. The third paper "Testing for Rational Bubbles under Strongly Dependent Errors" considers testing procedures for rational bubbles under strongly dependent errors. A heteroskedasticity and autocorrelation robust (HAR) test statistic is proposed to detect the presence of rational bubbles in financial assets when errors are strongly dependent. The asymptotic theory of the test statistic is developed. Unlike conventional test statistics that lead to a too large type I error under strongly dependent errors, the new test does not suffer from the same size problem. In addition, it can consistently timestamp the origination and termination dates of a rational bubble. Monte Carlo studies are conducted to check the finite sample performance of the proposed test and estimators. An empirical application to the S&P 500 index highlights the usefulness of the proposed test statistic and estimators. 2020-04-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/etd_coll/288 https://ink.library.smu.edu.sg/cgi/viewcontent.cgi?article=1285&context=etd_coll http://creativecommons.org/licenses/by-nc-nd/4.0/ Dissertations and Theses Collection (Open Access) eng Institutional Knowledge at Singapore Management University Grid bootstrap Infill asymptotics Continuous-time models Long-span asymptotics Double asymptotics unit root explosive model long memory antipersistence Econometrics
institution Singapore Management University
building SMU Libraries
continent Asia
country Singapore
Singapore
content_provider SMU Libraries
collection InK@SMU
language English
topic Grid bootstrap
Infill asymptotics
Continuous-time models
Long-span asymptotics
Double asymptotics
unit root
explosive model
long memory
antipersistence
Econometrics
spellingShingle Grid bootstrap
Infill asymptotics
Continuous-time models
Long-span asymptotics
Double asymptotics
unit root
explosive model
long memory
antipersistence
Econometrics
LUI, Yiu Lim
Three essays on nonstationary time series econometrics
description This dissertation comprises three papers that separately study different nonstationary time series models. The first paper, titled as "The Grid Bootstrap for Continuous Time Models", is a joint work with Professor Jun Yu and Professor Weilin Xiao. It considers the grid bootstrap for constructing confidence intervals for the persistence parameter in a class of continuous-time models driven by a Lévy process. Its asymptotic validity is discussed under the assumption that the sampling interval (h) shrinks to zero, the time span (N) goes to infinity or both. Its improvement over the in-fill asymptotic theory is achieved by expanding the coefficient-based statistic around its in-fill asymptotic distribution which is non-pivotal and depends on the initial condition. Monte Carlo studies show that the grid bootstrap method performs better than the in-fill asymptotic theory and much better than the long-span asymptotic theory. Empirical applications to U.S. interest rate data and volatility data suggest significant differences between the bootstrap confidence intervals and the confidence intervals obtained from the in-fill and long-span asymptotic distributions. The second paper, "Mildly Explosive Autoregression with Anti-persistent Errors" is another joint work with Professor Yu and Professor Xiao. It studies a mildly explosive autoregression model with Anti-persistent Errors. An asymptotic distribution is derived for the least squares (LS) estimate of a first-order autoregression with a mildly explosive root and anti-persistent errors. While the sample moments depend on the Hurst parameter asymptotically, the Cauchy limiting distribution theory remains valid for the LS estimates in the model without intercept and a model with an asymptotically negligible intercept. Monte Carlo studies are designed to check the precision of the Cauchy distribution in finite samples. An empirical study based on the monthly NASDAQ index highlights the usefulness of the model and the new limiting distribution. The third paper "Testing for Rational Bubbles under Strongly Dependent Errors" considers testing procedures for rational bubbles under strongly dependent errors. A heteroskedasticity and autocorrelation robust (HAR) test statistic is proposed to detect the presence of rational bubbles in financial assets when errors are strongly dependent. The asymptotic theory of the test statistic is developed. Unlike conventional test statistics that lead to a too large type I error under strongly dependent errors, the new test does not suffer from the same size problem. In addition, it can consistently timestamp the origination and termination dates of a rational bubble. Monte Carlo studies are conducted to check the finite sample performance of the proposed test and estimators. An empirical application to the S&P 500 index highlights the usefulness of the proposed test statistic and estimators.
format text
author LUI, Yiu Lim
author_facet LUI, Yiu Lim
author_sort LUI, Yiu Lim
title Three essays on nonstationary time series econometrics
title_short Three essays on nonstationary time series econometrics
title_full Three essays on nonstationary time series econometrics
title_fullStr Three essays on nonstationary time series econometrics
title_full_unstemmed Three essays on nonstationary time series econometrics
title_sort three essays on nonstationary time series econometrics
publisher Institutional Knowledge at Singapore Management University
publishDate 2020
url https://ink.library.smu.edu.sg/etd_coll/288
https://ink.library.smu.edu.sg/cgi/viewcontent.cgi?article=1285&context=etd_coll
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