Improved methods for statistical inference in the context of various types of parameter variation

This dissertation addresses various issues related to statistical inference in the context of parameter time-variation. The problem is considered within general regression models as well as in the context of methods for forecast evaluation. The first chapter develops a theory of evolutionary spec...

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Main Author: Casini, Alessandro
Other Authors: Perron, Pierre
Language:en_US
Published: 2019
Subjects:
Online Access:https://hdl.handle.net/2144/38750
id ndltd-bu.edu-oai-open.bu.edu-2144-38750
record_format oai_dc
spelling ndltd-bu.edu-oai-open.bu.edu-2144-387502019-12-15T03:05:35Z Improved methods for statistical inference in the context of various types of parameter variation Casini, Alessandro Perron, Pierre Economics This dissertation addresses various issues related to statistical inference in the context of parameter time-variation. The problem is considered within general regression models as well as in the context of methods for forecast evaluation. The first chapter develops a theory of evolutionary spectra for heteroskedasticityand autocorrelation-robust (HAR) inference when the data may not satisfy secondorder stationarity. We introduce a class of nonstationary stochastic processes that have a time-varying spectral representation and presents a new positive semidefinite heteroskedasticity- and autocorrelation consistent (HAC) estimator. We obtain an optimal HAC estimator under the mean-squared error (MSE) criterion and show its consistency. We propose a data-dependent procedure based on a “plug-in” approach that determines the bandwidth parameters for given kernels and a given sample size. The second chapter develops a continuous record asymptotic framework to build inference methods for the date of a structural change in a linear regression model. We impose very mild regularity conditions on an underlying continuous-time model assumed to generate the data. We consider the least-squares estimate of the break date and establish consistency and convergence rate. We provide a limit theory for shrinking magnitudes of shifts and locally increasing variances. The third chapter develops a novel continuous-time asymptotic framework for inference on whether the predictive ability of a given forecast model remains stable over time. As the sampling interval between observations shrinks to zero the sequence of forecast losses is approximated by a continuous-time stochastic process possessing certain pathwise properties. We consider an hypotheses testing problem based on the local properties of the continuous-time limit counterpart of the sequence of losses. The fourth chapter develops a class of Generalized Laplace (GL) inference methods for the change-point dates in a linear time series regression model with multiple structural changes. The GL estimator is defined by an integration rather than optimization-based method and relies on the least-squares criterion function. On the theoretical side, depending on some smoothing parameter, the class of GL estimators exhibits a dual limiting distribution; namely, the classical shrinkage asymptotic distribution of the least-squares estimator, or a Bayes-type asymptotic distribution. 2019-12-12T18:32:38Z 2019-12-12T18:32:38Z 2019 2019-11-12T20:01:12Z Thesis/Dissertation https://hdl.handle.net/2144/38750 0000-0002-1088-4802 en_US
collection NDLTD
language en_US
sources NDLTD
topic Economics
spellingShingle Economics
Casini, Alessandro
Improved methods for statistical inference in the context of various types of parameter variation
description This dissertation addresses various issues related to statistical inference in the context of parameter time-variation. The problem is considered within general regression models as well as in the context of methods for forecast evaluation. The first chapter develops a theory of evolutionary spectra for heteroskedasticityand autocorrelation-robust (HAR) inference when the data may not satisfy secondorder stationarity. We introduce a class of nonstationary stochastic processes that have a time-varying spectral representation and presents a new positive semidefinite heteroskedasticity- and autocorrelation consistent (HAC) estimator. We obtain an optimal HAC estimator under the mean-squared error (MSE) criterion and show its consistency. We propose a data-dependent procedure based on a “plug-in” approach that determines the bandwidth parameters for given kernels and a given sample size. The second chapter develops a continuous record asymptotic framework to build inference methods for the date of a structural change in a linear regression model. We impose very mild regularity conditions on an underlying continuous-time model assumed to generate the data. We consider the least-squares estimate of the break date and establish consistency and convergence rate. We provide a limit theory for shrinking magnitudes of shifts and locally increasing variances. The third chapter develops a novel continuous-time asymptotic framework for inference on whether the predictive ability of a given forecast model remains stable over time. As the sampling interval between observations shrinks to zero the sequence of forecast losses is approximated by a continuous-time stochastic process possessing certain pathwise properties. We consider an hypotheses testing problem based on the local properties of the continuous-time limit counterpart of the sequence of losses. The fourth chapter develops a class of Generalized Laplace (GL) inference methods for the change-point dates in a linear time series regression model with multiple structural changes. The GL estimator is defined by an integration rather than optimization-based method and relies on the least-squares criterion function. On the theoretical side, depending on some smoothing parameter, the class of GL estimators exhibits a dual limiting distribution; namely, the classical shrinkage asymptotic distribution of the least-squares estimator, or a Bayes-type asymptotic distribution.
author2 Perron, Pierre
author_facet Perron, Pierre
Casini, Alessandro
author Casini, Alessandro
author_sort Casini, Alessandro
title Improved methods for statistical inference in the context of various types of parameter variation
title_short Improved methods for statistical inference in the context of various types of parameter variation
title_full Improved methods for statistical inference in the context of various types of parameter variation
title_fullStr Improved methods for statistical inference in the context of various types of parameter variation
title_full_unstemmed Improved methods for statistical inference in the context of various types of parameter variation
title_sort improved methods for statistical inference in the context of various types of parameter variation
publishDate 2019
url https://hdl.handle.net/2144/38750
work_keys_str_mv AT casinialessandro improvedmethodsforstatisticalinferenceinthecontextofvarioustypesofparametervariation
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