Essays on Time Series Analysis : With Applications to Financial Econometrics

This doctoral thesis is comprised of four papers that all relate to the subject of Time Series Analysis. The first paper of the thesis considers point estimation in a nonnegative, hence non-Gaussian, AR(1) model. The parameter estimation is carried out using a type of extreme value estimators (EVEs)...

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Main Author: Preve, Daniel
Format: Doctoral Thesis
Language:English
Published: Uppsala universitet, Institutionen för informationsvetenskap 2008
Subjects:
Online Access:http://urn.kb.se/resolve?urn=urn:nbn:se:uu:diva-8638
http://nbn-resolving.de/urn:isbn:978-91-554-7158-3
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spelling ndltd-UPSALLA1-oai-DiVA.org-uu-86382013-01-08T13:04:43ZEssays on Time Series Analysis : With Applications to Financial EconometricsengPreve, DanielUppsala universitet, Institutionen för informationsvetenskapUppsala : Acta Universitatis Upsaliensis2008non-Gaussian time seriesnonnegative autoregressionrobust estimationstrong convergencerealized volatilityvolatility forecastforecast comparisonDiebold-Mariano testStatisticsStatistikThis doctoral thesis is comprised of four papers that all relate to the subject of Time Series Analysis. The first paper of the thesis considers point estimation in a nonnegative, hence non-Gaussian, AR(1) model. The parameter estimation is carried out using a type of extreme value estimators (EVEs). A novel estimation method based on the EVEs is presented. The theoretical analysis is complemented with Monte Carlo simulation results and the paper is concluded by an empirical example. The second paper extends the model of the first paper of the thesis and considers semiparametric, robust point estimation in a nonlinear nonnegative autoregression. The nonnegative AR(1) model of the first paper is extended in three important ways: First, we allow the errors to be serially correlated. Second, we allow for heteroskedasticity of unknown form. Third, we allow for a multi-variable mapping of previous observations. Once more, the EVEs used for parameter estimation are shown to be strongly consistent under very general conditions. The theoretical analysis is complemented with extensive Monte Carlo simulation studies that illustrate the asymptotic theory and indicate reasonable small sample properties of the proposed estimators. In the third paper we construct a simple nonnegative time series model for realized volatility, use the results of the second paper to estimate the proposed model on S&P 500 monthly realized volatilities, and then use the estimated model to make one-month-ahead forecasts. The out-of-sample performance of the proposed model is evaluated against a number of standard models. Various tests and accuracy measures are utilized to evaluate the forecast performances. It is found that forecasts from the nonnegative model perform exceptionally well under the mean absolute error and the mean absolute percentage error forecast accuracy measures. In the fourth and last paper of the thesis we construct a multivariate extension of the popular Diebold-Mariano test. Under the null hypothesis of equal predictive accuracy of three or more forecasting models, the proposed test statistic has an asymptotic Chi-squared distribution. To explore whether the behavior of the test in moderate-sized samples can be improved, we also provide a finite-sample correction. A small-scale Monte Carlo study indicates that the proposed test has reasonable size properties in large samples and that it benefits noticeably from the finite-sample correction, even in quite large samples. The paper is concluded by an empirical example that illustrates the practical use of the two tests. Doctoral thesis, comprehensive summaryinfo:eu-repo/semantics/doctoralThesistexthttp://urn.kb.se/resolve?urn=urn:nbn:se:uu:diva-8638urn:isbn:978-91-554-7158-3Digital Comprehensive Summaries of Uppsala Dissertations from the Faculty of Social Sciences, 1652-9030 ; 39application/pdfinfo:eu-repo/semantics/openAccess
collection NDLTD
language English
format Doctoral Thesis
sources NDLTD
topic non-Gaussian time series
nonnegative autoregression
robust estimation
strong convergence
realized volatility
volatility forecast
forecast comparison
Diebold-Mariano test
Statistics
Statistik
spellingShingle non-Gaussian time series
nonnegative autoregression
robust estimation
strong convergence
realized volatility
volatility forecast
forecast comparison
Diebold-Mariano test
Statistics
Statistik
Preve, Daniel
Essays on Time Series Analysis : With Applications to Financial Econometrics
description This doctoral thesis is comprised of four papers that all relate to the subject of Time Series Analysis. The first paper of the thesis considers point estimation in a nonnegative, hence non-Gaussian, AR(1) model. The parameter estimation is carried out using a type of extreme value estimators (EVEs). A novel estimation method based on the EVEs is presented. The theoretical analysis is complemented with Monte Carlo simulation results and the paper is concluded by an empirical example. The second paper extends the model of the first paper of the thesis and considers semiparametric, robust point estimation in a nonlinear nonnegative autoregression. The nonnegative AR(1) model of the first paper is extended in three important ways: First, we allow the errors to be serially correlated. Second, we allow for heteroskedasticity of unknown form. Third, we allow for a multi-variable mapping of previous observations. Once more, the EVEs used for parameter estimation are shown to be strongly consistent under very general conditions. The theoretical analysis is complemented with extensive Monte Carlo simulation studies that illustrate the asymptotic theory and indicate reasonable small sample properties of the proposed estimators. In the third paper we construct a simple nonnegative time series model for realized volatility, use the results of the second paper to estimate the proposed model on S&P 500 monthly realized volatilities, and then use the estimated model to make one-month-ahead forecasts. The out-of-sample performance of the proposed model is evaluated against a number of standard models. Various tests and accuracy measures are utilized to evaluate the forecast performances. It is found that forecasts from the nonnegative model perform exceptionally well under the mean absolute error and the mean absolute percentage error forecast accuracy measures. In the fourth and last paper of the thesis we construct a multivariate extension of the popular Diebold-Mariano test. Under the null hypothesis of equal predictive accuracy of three or more forecasting models, the proposed test statistic has an asymptotic Chi-squared distribution. To explore whether the behavior of the test in moderate-sized samples can be improved, we also provide a finite-sample correction. A small-scale Monte Carlo study indicates that the proposed test has reasonable size properties in large samples and that it benefits noticeably from the finite-sample correction, even in quite large samples. The paper is concluded by an empirical example that illustrates the practical use of the two tests.
author Preve, Daniel
author_facet Preve, Daniel
author_sort Preve, Daniel
title Essays on Time Series Analysis : With Applications to Financial Econometrics
title_short Essays on Time Series Analysis : With Applications to Financial Econometrics
title_full Essays on Time Series Analysis : With Applications to Financial Econometrics
title_fullStr Essays on Time Series Analysis : With Applications to Financial Econometrics
title_full_unstemmed Essays on Time Series Analysis : With Applications to Financial Econometrics
title_sort essays on time series analysis : with applications to financial econometrics
publisher Uppsala universitet, Institutionen för informationsvetenskap
publishDate 2008
url http://urn.kb.se/resolve?urn=urn:nbn:se:uu:diva-8638
http://nbn-resolving.de/urn:isbn:978-91-554-7158-3
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