Essays on nonstationary econometrics

My dissertation consists of three essays that contribute new theoretical results to robust inference procedures and machine learning algorithms in nonstationary models. Chapter 2 compares OLS and GLS in autoregressions with integrated noise terms. Grenander and Rosenblatt (2008) gave sufficient cond...

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Main Author: LIU, Yanbo
Format: text
Language:English
Published: Institutional Knowledge at Singapore Management University 2020
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Online Access:https://ink.library.smu.edu.sg/etd_coll/286
https://ink.library.smu.edu.sg/cgi/viewcontent.cgi?article=1287&context=etd_coll
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Institution: Singapore Management University
Language: English
id sg-smu-ink.etd_coll-1287
record_format dspace
institution Singapore Management University
building SMU Libraries
continent Asia
country Singapore
Singapore
content_provider SMU Libraries
collection InK@SMU
language English
topic Nonstationary
Near Unit Root
Robust Inference
Panel Data
Econometrics
spellingShingle Nonstationary
Near Unit Root
Robust Inference
Panel Data
Econometrics
LIU, Yanbo
Essays on nonstationary econometrics
description My dissertation consists of three essays that contribute new theoretical results to robust inference procedures and machine learning algorithms in nonstationary models. Chapter 2 compares OLS and GLS in autoregressions with integrated noise terms. Grenander and Rosenblatt (2008) gave sufficient conditions for the asymptotic equivalence of GLS and OLS in deterministic trend extraction. However when extending to univariate autoregression model yt = ρnyt−1 + ut , ρn = 1 + c nα , ut = ut−1 + t , and t is one iid disturbance term with zero expectation and σ 2 variance, the asymptotic equivalence no longer holds. Under the mildly explosive (c > 0, α ∈ (0, 1)) and pure explosive (c > 0, α = 0) cases, the limiting distributions of OLS and GLS estimates are identical as standard Cauchy distribution, and the OLS estimate has a slower convergence rate. Under the mildly stationary (c < 0, α ∈ (0, 1)) case, the limiting distribution of OLS is degenerate centered at −c, while the GLS estimate is Gaussian distributed. Under the local to unity (α = 1) case, when c ≥ c ∗ , the mean and variance of the asymptotic distribution of the OLS estimate are smaller than the GLS estimate, showing the efficiency gains in OLS. Chapter 3 proposes novel mechanisms for identifying explosive bubbles in panel autoregressions with a latent group structure. Two post-classification panel data approaches are employed to test the explosiveness in time-series data. The first approach applies a recursive k-means clustering algorithm to explosive panel autoregressions. The second approach uses a modified k-means clustering algorithm for mixed-root panel autoregressions. We establish the uniform consistency of both clustering algorithms. The abovementioned k-means procedures achieve the oracle properties so that the post-classification estimators are asymptotically equivalent to the infeasible estimators that use the true group identities. Two right-tailed t-statistics, based on post-classification estimators, are introduced to detect explosiveness. A panel recursive procedure is proposed to estimate the origination date of explosiveness. The asymptotic theory is available for concentration inequalities, clustering algorithms, and right-tailed t-tests based on mixed-root panels. Extensive Monte Carlo simulations provide strong evidence that the proposed panel approaches lead to substantial power gains compared with the time-series approach. Chapter 4 explores predictive regression models with stochastic unit root (STUR) components and robust inference procedures that encompass a wide class of persistent and time-varying stochastically nonstationary regressors. The paper extends the mechanism of endogenously generated instrumentation known as IVX, showing that these methods remain valid for short- and long-horizon predictive regressions in which the predictors have STUR and local STUR (LSTUR) generating mechanisms. Both mean regression and quantile regression methods are considered. The asymptotic distributions of the IVX estimators are new compared to previous work but again lead to pivotal limit distributions for Wald testing procedures that remain robust for both single and multiple regressors with various degrees of persistence and stochastic and fixed local departures from unity. Numerical experiments corroborate the asymptotic theory, and IVX testing shows good power and size control. The new methods are illustrated in an empirical application to evaluate the predictive capability of economic fundamentals in forecasting excess returns in the Dow Jones industrial average index.
format text
author LIU, Yanbo
author_facet LIU, Yanbo
author_sort LIU, Yanbo
title Essays on nonstationary econometrics
title_short Essays on nonstationary econometrics
title_full Essays on nonstationary econometrics
title_fullStr Essays on nonstationary econometrics
title_full_unstemmed Essays on nonstationary econometrics
title_sort essays on nonstationary econometrics
publisher Institutional Knowledge at Singapore Management University
publishDate 2020
url https://ink.library.smu.edu.sg/etd_coll/286
https://ink.library.smu.edu.sg/cgi/viewcontent.cgi?article=1287&amp;context=etd_coll
_version_ 1712300942844493824
spelling sg-smu-ink.etd_coll-12872020-08-20T07:26:16Z Essays on nonstationary econometrics LIU, Yanbo My dissertation consists of three essays that contribute new theoretical results to robust inference procedures and machine learning algorithms in nonstationary models. Chapter 2 compares OLS and GLS in autoregressions with integrated noise terms. Grenander and Rosenblatt (2008) gave sufficient conditions for the asymptotic equivalence of GLS and OLS in deterministic trend extraction. However when extending to univariate autoregression model yt = ρnyt−1 + ut , ρn = 1 + c nα , ut = ut−1 + t , and t is one iid disturbance term with zero expectation and σ 2 variance, the asymptotic equivalence no longer holds. Under the mildly explosive (c > 0, α ∈ (0, 1)) and pure explosive (c > 0, α = 0) cases, the limiting distributions of OLS and GLS estimates are identical as standard Cauchy distribution, and the OLS estimate has a slower convergence rate. Under the mildly stationary (c < 0, α ∈ (0, 1)) case, the limiting distribution of OLS is degenerate centered at −c, while the GLS estimate is Gaussian distributed. Under the local to unity (α = 1) case, when c ≥ c ∗ , the mean and variance of the asymptotic distribution of the OLS estimate are smaller than the GLS estimate, showing the efficiency gains in OLS. Chapter 3 proposes novel mechanisms for identifying explosive bubbles in panel autoregressions with a latent group structure. Two post-classification panel data approaches are employed to test the explosiveness in time-series data. The first approach applies a recursive k-means clustering algorithm to explosive panel autoregressions. The second approach uses a modified k-means clustering algorithm for mixed-root panel autoregressions. We establish the uniform consistency of both clustering algorithms. The abovementioned k-means procedures achieve the oracle properties so that the post-classification estimators are asymptotically equivalent to the infeasible estimators that use the true group identities. Two right-tailed t-statistics, based on post-classification estimators, are introduced to detect explosiveness. A panel recursive procedure is proposed to estimate the origination date of explosiveness. The asymptotic theory is available for concentration inequalities, clustering algorithms, and right-tailed t-tests based on mixed-root panels. Extensive Monte Carlo simulations provide strong evidence that the proposed panel approaches lead to substantial power gains compared with the time-series approach. Chapter 4 explores predictive regression models with stochastic unit root (STUR) components and robust inference procedures that encompass a wide class of persistent and time-varying stochastically nonstationary regressors. The paper extends the mechanism of endogenously generated instrumentation known as IVX, showing that these methods remain valid for short- and long-horizon predictive regressions in which the predictors have STUR and local STUR (LSTUR) generating mechanisms. Both mean regression and quantile regression methods are considered. The asymptotic distributions of the IVX estimators are new compared to previous work but again lead to pivotal limit distributions for Wald testing procedures that remain robust for both single and multiple regressors with various degrees of persistence and stochastic and fixed local departures from unity. Numerical experiments corroborate the asymptotic theory, and IVX testing shows good power and size control. The new methods are illustrated in an empirical application to evaluate the predictive capability of economic fundamentals in forecasting excess returns in the Dow Jones industrial average index. 2020-04-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/etd_coll/286 https://ink.library.smu.edu.sg/cgi/viewcontent.cgi?article=1287&amp;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 Nonstationary Near Unit Root Robust Inference Panel Data Econometrics