Time Series Data Analysis Using EViews

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Format: eBook
Pub. Date: 2009-07-01
Publisher(s): Wiley
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Summary

Do you want to recognize the most suitable models for analysis of statistical data sets? This book provides a hands-on practical guide to using the most suitable models for analysis of statistical data sets using EViews - an interactive Windows-based computer software program for sophisticated data analysis, regression, and forecasting - to define and test statistical hypotheses. Rich in examples and with an emphasis on how to develop acceptable statistical models, Time Series Data Analysis Using EViews is a perfect complement to theoretical books presenting statistical or econometric models for time series data. The procedures introduced are easily extendible to cross-section data sets. The author: Provides step-by-step directions on how to apply EViews software to time series data analysis Offers guidance on how to develop and evaluate alternative empirical models, permitting the most appropriate to be selected without the need for computational formulae Examines a variety of times series models, including continuous growth, discontinuous growth, seemingly causal, regression, ARCH, and GARCH as well as a general form of nonlinear time series and nonparametric models Gives over 250 illustrative examples and notes based on the author's own empirical findings, allowing the advantages and limitations of each model to be understood Describes the theory behind the models in comprehensive appendices Provides supplementary information and data sets An essential tool for advanced undergraduate and graduate students taking finance or econometrics courses. Statistics, life sciences, and social science students, as well as applied researchers, will also find this book an invaluable resource.

Table of Contents

Preface
EViews workfile and descriptive data analysis
What is the EViews workfile?
Basic options in EViews
Creating a workfile
Illustrative data analysis
Special notes and comments
Statistics as a sample space
Continuous growth models
Introduction
Classical growth models
Autoregressive growth models
Residual tests
Bounded autoregressive growth models
Lagged variables or autoregressive growth models
Polynomial growth model
Growth models with exogenous variables
A Taylor series approximation model
Alternative univariate growth models
Multivariate growth models
Multivariate AR(p) GLM with trend
Generalized multivariate models with trend
Special notes and comments
Alternative multivariate models with trend
Generalized multivariate models with time-related effects
Discontinuous growth models
Introduction
Piecewise growth models
Piecewise S-shape growth models
Two-piece polynomial bounded growth models
Discontinuous translog linear AR(1) growth models
Alternative discontinuous growth models
Stability test
Generalized discontinuous models with trend
General two-piece models with time-related effects
Multivariate models by states and time periods
Seemingly causal models
Introduction
Statistical analysis based on a single time series
Bivariate seemingly causal models
Trivariate seemingly causal models
System equations based on trivariate time series
General system of equations
Seemingly causal models with dummy variables
General discontinuous seemingly causal models
Additional selected seemingly causal models
Final notes in developing models
Special cases of regression models
Introduction
Specific cases of growth curve models
Seemingly causal models
Lagged variable models
Cases based on the US domestic price of copper
Return rate models
Cases based on the BASICS workfile
VAR and system estimation methods
Introduction
The VAR models
The vector error correction models
Special notes and comments
Instrumental variables models
Introduction
Should we apply instrumental models?
Residual analysis in developing instrumental models
System equation with instrumental variables
Selected cases based on the US_DPOC data
Instrumental models with time-related effects
Instrumental seemingly causal models
Multivariate instrumental models based on the US_DPOC
Further extension of the instrumental models
ARCH models
Introduction
Options of ARCH models
Simple ARCH models
ARCH models with exogenous variables
Alternative GARCH variance series
Additional testing hypotheses
Introduction
The unit root tests
The omitted variables tests
Redundant variables test (RV-test)
Nonnested test (NN-test)
The Ramsey RESET test
Illustrative examples based on the Demo.wf1
Nonlinear least squares models
Introduction
Classical growth models
Generalized Cobb-Douglas models
Generalized CES models
Special notes and comments
Other NLS models
Nonparametric estimation methods
What is the nonparametric data analysis
Basic moving average estimates
Measuring the best fit model
Advanced moving average models
Nonparametric regression based on a time series
The local polynomial Kernel fit regression
Nonparametric growth models
Models for a single time series
The simplest model
First-order autoregressive models
Second-order autoregressive model
First-order moving average model
Second-order moving average model
The simplest ARMA model
General ARMA model
Simple linear models
The simplest linear model
Linear model with basic assumptions
Maximum likelihood estimation method
First-order autoregressive linear model
AR(p) linear model
Alternative models
Lagged-variable model
Lagged-variable autoregressive models
Special notes and comments
General linear models
General linear model with i.i.d. Gaussian disturbances
AR(1) general linear model
AR(p) general linear model
General lagged-variable autoregressive model
General models with Gaussian errors
Multivariate general linear models
Multivariate general linear models
Moments of an endogenous multivariate
Vector autoregressive model
Vector moving average model
Vector autoregressive moving average model
Simple multivariate models with exogenous variables
General estimation methods
Maximum likelihood estimation for an MGLM
MGLM with autoregressive errors
References
Index
Table of Contents provided by Publisher. All Rights Reserved.

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