Bootstrap Inference in Time Series Econometrics

Bootstrap Inference in Time Series Econometrics
Title Bootstrap Inference in Time Series Econometrics PDF eBook
Author Mikael Gredenhoff
Publisher Stockholm School of Economics Efi Economic Research Institut
Pages 170
Release 1998
Genre Business & Economics
ISBN

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Time Series

Time Series
Title Time Series PDF eBook
Author Tucker S. McElroy
Publisher CRC Press
Pages 587
Release 2019-12-09
Genre Mathematics
ISBN 1439876525

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Time Series: A First Course with Bootstrap Starter provides an introductory course on time series analysis that satisfies the triptych of (i) mathematical completeness, (ii) computational illustration and implementation, and (iii) conciseness and accessibility to upper-level undergraduate and M.S. students. Basic theoretical results are presented in a mathematically convincing way, and the methods of data analysis are developed through examples and exercises parsed in R. A student with a basic course in mathematical statistics will learn both how to analyze time series and how to interpret the results. The book provides the foundation of time series methods, including linear filters and a geometric approach to prediction. The important paradigm of ARMA models is studied in-depth, as well as frequency domain methods. Entropy and other information theoretic notions are introduced, with applications to time series modeling. The second half of the book focuses on statistical inference, the fitting of time series models, as well as computational facets of forecasting. Many time series of interest are nonlinear in which case classical inference methods can fail, but bootstrap methods may come to the rescue. Distinctive features of the book are the emphasis on geometric notions and the frequency domain, the discussion of entropy maximization, and a thorough treatment of recent computer-intensive methods for time series such as subsampling and the bootstrap. There are more than 600 exercises, half of which involve R coding and/or data analysis. Supplements include a website with 12 key data sets and all R code for the book's examples, as well as the solutions to exercises.

A Primer on Bootstrap Testing of Hypotheses in Time Series Models

A Primer on Bootstrap Testing of Hypotheses in Time Series Models
Title A Primer on Bootstrap Testing of Hypotheses in Time Series Models PDF eBook
Author Giuseppe Cavaliere
Publisher
Pages
Release 2019
Genre
ISBN

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Time Series Econometrics

Time Series Econometrics
Title Time Series Econometrics PDF eBook
Author Pierre Perron
Publisher
Pages
Release 2018
Genre Econometrics
ISBN 9789813237896

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Part I. Unit roots and trend breaks -- Part II. Structural change

Applied Time Series Econometrics

Applied Time Series Econometrics
Title Applied Time Series Econometrics PDF eBook
Author Helmut Lütkepohl
Publisher Cambridge University Press
Pages 351
Release 2004-08-02
Genre Business & Economics
ISBN 1139454730

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Time series econometrics is a rapidly evolving field. Particularly, the cointegration revolution has had a substantial impact on applied analysis. Hence, no textbook has managed to cover the full range of methods in current use and explain how to proceed in applied domains. This gap in the literature motivates the present volume. The methods are sketched out, reminding the reader of the ideas underlying them and giving sufficient background for empirical work. The treatment can also be used as a textbook for a course on applied time series econometrics. Topics include: unit root and cointegration analysis, structural vector autoregressions, conditional heteroskedasticity and nonlinear and nonparametric time series models. Crucial to empirical work is the software that is available for analysis. New methodology is typically only gradually incorporated into existing software packages. Therefore a flexible Java interface has been created, allowing readers to replicate the applications and conduct their own analyses.

Monte Carlo Simulation for Econometricians

Monte Carlo Simulation for Econometricians
Title Monte Carlo Simulation for Econometricians PDF eBook
Author Jan F. Kiviet
Publisher Foundations & Trends
Pages 185
Release 2012
Genre Business & Economics
ISBN 9781601985385

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Monte Carlo Simulation for Econometricians presents the fundamentals of Monte Carlo simulation (MCS), pointing to opportunities not often utilized in current practice, especially with regards to designing their general setup, controlling their accuracy, recognizing their shortcomings, and presenting their results in a coherent way. The author explores the properties of classic econometric inference techniques by simulation. The first three chapters focus on the basic tools of MCS. After treating the basic tools of MCS, Chapter 4 examines the crucial elements of analyzing the properties of asymptotic test procedures by MCS. Chapter 5 examines more general aspects of MCS, such as its history, possibilities to increase its efficiency and effectiveness, and whether synthetic random exogenous variables should be kept fixed over all the experiments or be treated as genuinely random and thus redrawn every replication. The simulation techniques that we discuss in the first five chapters are often addressed as naive or classic Monte Carlo methods. However, simulation can also be used not just for assessing the qualities of inference techniques, but also directly for obtaining inference in practice from empirical data. Various advanced inference techniques have been developed which incorporate simulation techniques. An early example of this is Monte Carlo testing, which corresponds to the parametric bootstrap technique. Chapter 6 highlights such techniques and presents a few examples of (semi-)parametric bootstrap techniques. This chapter also demonstrates that the bootstrap is not an alternative to MCS but just another practical inference technique, which uses simulation to produce econometric inference. Each chapter includes exercises allowing the reader to immerse in performing and interpreting MCS studies. The material has been used extensively in courses for undergraduate and graduate students. The various chapters all contain illustrations which throw light on what uses can be made from MCS to discover the finite sample properties of a broad range of alternative econometric methods with a focus on the rather basic models and techniques.

Identification and Inference for Econometric Models

Identification and Inference for Econometric Models
Title Identification and Inference for Econometric Models PDF eBook
Author Donald W. K. Andrews
Publisher Cambridge University Press
Pages 589
Release 2005-07-04
Genre Business & Economics
ISBN 1139444603

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This 2005 volume contains the papers presented in honor of the lifelong achievements of Thomas J. Rothenberg on the occasion of his retirement. The authors of the chapters include many of the leading econometricians of our day, and the chapters address topics of current research significance in econometric theory. The chapters cover four themes: identification and efficient estimation in econometrics, asymptotic approximations to the distributions of econometric estimators and tests, inference involving potentially nonstationary time series, such as processes that might have a unit autoregressive root, and nonparametric and semiparametric inference. Several of the chapters provide overviews and treatments of basic conceptual issues, while others advance our understanding of the properties of existing econometric procedures and/or propose others. Specific topics include identification in nonlinear models, inference with weak instruments, tests for nonstationary in time series and panel data, generalized empirical likelihood estimation, and the bootstrap.