Author: Karter J
Publisher: Createspace Independent Publishing Platform
ISBN: 9781539546382
Category :
Languages : en
Pages :
Book Description
This book presents the MATLAB functions for working with time series and econometric models whose variables are time series. ARIMA Box Jenkins methodology, VARMAX multivariate models, models with conditional heteroskedasticity ARCH / GARCH / GJR and all kinds of econometric models with temporal dimension is included. All functions are treated with full syntax and illustrated with examples.
Time Series Analysis with MATLAB. Arima/Varmax/Garch/Gjr Models. Functions and Examples
Author: Karter J
Publisher: Createspace Independent Publishing Platform
ISBN: 9781539546382
Category :
Languages : en
Pages :
Book Description
This book presents the MATLAB functions for working with time series and econometric models whose variables are time series. ARIMA Box Jenkins methodology, VARMAX multivariate models, models with conditional heteroskedasticity ARCH / GARCH / GJR and all kinds of econometric models with temporal dimension is included. All functions are treated with full syntax and illustrated with examples.
Publisher: Createspace Independent Publishing Platform
ISBN: 9781539546382
Category :
Languages : en
Pages :
Book Description
This book presents the MATLAB functions for working with time series and econometric models whose variables are time series. ARIMA Box Jenkins methodology, VARMAX multivariate models, models with conditional heteroskedasticity ARCH / GARCH / GJR and all kinds of econometric models with temporal dimension is included. All functions are treated with full syntax and illustrated with examples.
GARCH Models
Author: Christian Francq
Publisher: John Wiley & Sons
ISBN: 1119957397
Category : Mathematics
Languages : en
Pages : 469
Book Description
This book provides a comprehensive and systematic approach to understanding GARCH time series models and their applications whilst presenting the most advanced results concerning the theory and practical aspects of GARCH. The probability structure of standard GARCH models is studied in detail as well as statistical inference such as identification, estimation and tests. The book also provides coverage of several extensions such as asymmetric and multivariate models and looks at financial applications. Key features: Provides up-to-date coverage of the current research in the probability, statistics and econometric theory of GARCH models. Numerous illustrations and applications to real financial series are provided. Supporting website featuring R codes, Fortran programs and data sets. Presents a large collection of problems and exercises. This authoritative, state-of-the-art reference is ideal for graduate students, researchers and practitioners in business and finance seeking to broaden their skills of understanding of econometric time series models.
Publisher: John Wiley & Sons
ISBN: 1119957397
Category : Mathematics
Languages : en
Pages : 469
Book Description
This book provides a comprehensive and systematic approach to understanding GARCH time series models and their applications whilst presenting the most advanced results concerning the theory and practical aspects of GARCH. The probability structure of standard GARCH models is studied in detail as well as statistical inference such as identification, estimation and tests. The book also provides coverage of several extensions such as asymmetric and multivariate models and looks at financial applications. Key features: Provides up-to-date coverage of the current research in the probability, statistics and econometric theory of GARCH models. Numerous illustrations and applications to real financial series are provided. Supporting website featuring R codes, Fortran programs and data sets. Presents a large collection of problems and exercises. This authoritative, state-of-the-art reference is ideal for graduate students, researchers and practitioners in business and finance seeking to broaden their skills of understanding of econometric time series models.
Time Series Analysis with Matlab. Arima and Arimax Models
Author: Perez M.
Publisher: Createspace Independent Publishing Platform
ISBN: 9781534860919
Category :
Languages : en
Pages : 192
Book Description
Econometrics Toolbox(TM) provides functions for modeling economic data. You can select and calibrate economic models for simulation and forecasting. For time series modeling and analysis, the toolbox includes univariate ARMAX/GARCH composite models with several GARCH variants, multivariate VARMAX models, and cointegration analysis. It also provides methods for modeling economic systems using state-space models and for estimating using the Kalman filter. You can use a variety of diagnostic functions for model selection, including hypothesis, unit root, and stationarity tests.. This book especially developed ARIMA and ARIMAX models acfross BOX-JENKINS methodology
Publisher: Createspace Independent Publishing Platform
ISBN: 9781534860919
Category :
Languages : en
Pages : 192
Book Description
Econometrics Toolbox(TM) provides functions for modeling economic data. You can select and calibrate economic models for simulation and forecasting. For time series modeling and analysis, the toolbox includes univariate ARMAX/GARCH composite models with several GARCH variants, multivariate VARMAX models, and cointegration analysis. It also provides methods for modeling economic systems using state-space models and for estimating using the Kalman filter. You can use a variety of diagnostic functions for model selection, including hypothesis, unit root, and stationarity tests.. This book especially developed ARIMA and ARIMAX models acfross BOX-JENKINS methodology
Linear Time Series with MATLAB and OCTAVE
Author: Víctor Gómez
Publisher: Springer Nature
ISBN: 3030207900
Category : Computers
Languages : en
Pages : 355
Book Description
This book presents an introduction to linear univariate and multivariate time series analysis, providing brief theoretical insights into each topic, and from the beginning illustrating the theory with software examples. As such, it quickly introduces readers to the peculiarities of each subject from both theoretical and the practical points of view. It also includes numerous examples and real-world applications that demonstrate how to handle different types of time series data. The associated software package, SSMMATLAB, is written in MATLAB and also runs on the free OCTAVE platform. The book focuses on linear time series models using a state space approach, with the Kalman filter and smoother as the main tools for model estimation, prediction and signal extraction. A chapter on state space models describes these tools and provides examples of their use with general state space models. Other topics discussed in the book include ARIMA; and transfer function and structural models; as well as signal extraction using the canonical decomposition in the univariate case, and VAR, VARMA, cointegrated VARMA, VARX, VARMAX, and multivariate structural models in the multivariate case. It also addresses spectral analysis, the use of fixed filters in a model-based approach, and automatic model identification procedures for ARIMA and transfer function models in the presence of outliers, interventions, complex seasonal patterns and other effects like Easter, trading day, etc. This book is intended for both students and researchers in various fields dealing with time series. The software provides numerous automatic procedures to handle common practical situations, but at the same time, readers with programming skills can write their own programs to deal with specific problems. Although the theoretical introduction to each topic is kept to a minimum, readers can consult the companion book ‘Multivariate Time Series With Linear State Space Structure’, by the same author, if they require more details.
Publisher: Springer Nature
ISBN: 3030207900
Category : Computers
Languages : en
Pages : 355
Book Description
This book presents an introduction to linear univariate and multivariate time series analysis, providing brief theoretical insights into each topic, and from the beginning illustrating the theory with software examples. As such, it quickly introduces readers to the peculiarities of each subject from both theoretical and the practical points of view. It also includes numerous examples and real-world applications that demonstrate how to handle different types of time series data. The associated software package, SSMMATLAB, is written in MATLAB and also runs on the free OCTAVE platform. The book focuses on linear time series models using a state space approach, with the Kalman filter and smoother as the main tools for model estimation, prediction and signal extraction. A chapter on state space models describes these tools and provides examples of their use with general state space models. Other topics discussed in the book include ARIMA; and transfer function and structural models; as well as signal extraction using the canonical decomposition in the univariate case, and VAR, VARMA, cointegrated VARMA, VARX, VARMAX, and multivariate structural models in the multivariate case. It also addresses spectral analysis, the use of fixed filters in a model-based approach, and automatic model identification procedures for ARIMA and transfer function models in the presence of outliers, interventions, complex seasonal patterns and other effects like Easter, trading day, etc. This book is intended for both students and researchers in various fields dealing with time series. The software provides numerous automatic procedures to handle common practical situations, but at the same time, readers with programming skills can write their own programs to deal with specific problems. Although the theoretical introduction to each topic is kept to a minimum, readers can consult the companion book ‘Multivariate Time Series With Linear State Space Structure’, by the same author, if they require more details.
Multivariate Time Series Analysis
Author: Ruey S. Tsay
Publisher: John Wiley & Sons
ISBN: 1118617754
Category : Mathematics
Languages : en
Pages : 414
Book Description
An accessible guide to the multivariate time series tools used in numerous real-world applications Multivariate Time Series Analysis: With R and Financial Applications is the much anticipated sequel coming from one of the most influential and prominent experts on the topic of time series. Through a fundamental balance of theory and methodology, the book supplies readers with a comprehensible approach to financial econometric models and their applications to real-world empirical research. Differing from the traditional approach to multivariate time series, the book focuses on reader comprehension by emphasizing structural specification, which results in simplified parsimonious VAR MA modeling. Multivariate Time Series Analysis: With R and Financial Applications utilizes the freely available R software package to explore complex data and illustrate related computation and analyses. Featuring the techniques and methodology of multivariate linear time series, stationary VAR models, VAR MA time series and models, unitroot process, factor models, and factor-augmented VAR models, the book includes: • Over 300 examples and exercises to reinforce the presented content • User-friendly R subroutines and research presented throughout to demonstrate modern applications • Numerous datasets and subroutines to provide readers with a deeper understanding of the material Multivariate Time Series Analysis is an ideal textbook for graduate-level courses on time series and quantitative finance and upper-undergraduate level statistics courses in time series. The book is also an indispensable reference for researchers and practitioners in business, finance, and econometrics.
Publisher: John Wiley & Sons
ISBN: 1118617754
Category : Mathematics
Languages : en
Pages : 414
Book Description
An accessible guide to the multivariate time series tools used in numerous real-world applications Multivariate Time Series Analysis: With R and Financial Applications is the much anticipated sequel coming from one of the most influential and prominent experts on the topic of time series. Through a fundamental balance of theory and methodology, the book supplies readers with a comprehensible approach to financial econometric models and their applications to real-world empirical research. Differing from the traditional approach to multivariate time series, the book focuses on reader comprehension by emphasizing structural specification, which results in simplified parsimonious VAR MA modeling. Multivariate Time Series Analysis: With R and Financial Applications utilizes the freely available R software package to explore complex data and illustrate related computation and analyses. Featuring the techniques and methodology of multivariate linear time series, stationary VAR models, VAR MA time series and models, unitroot process, factor models, and factor-augmented VAR models, the book includes: • Over 300 examples and exercises to reinforce the presented content • User-friendly R subroutines and research presented throughout to demonstrate modern applications • Numerous datasets and subroutines to provide readers with a deeper understanding of the material Multivariate Time Series Analysis is an ideal textbook for graduate-level courses on time series and quantitative finance and upper-undergraduate level statistics courses in time series. The book is also an indispensable reference for researchers and practitioners in business, finance, and econometrics.
Time Series Analysis With Matlab
Author: Perez M.
Publisher: Createspace Independent Publishing Platform
ISBN: 9781534845459
Category :
Languages : en
Pages : 204
Book Description
Econometrics Toolbox(TM) provides functions for modeling economic data. You can select and calibrate economic models for simulation and forecasting. For time series modeling and analysis, the toolbox includes univariate ARMAX/GARCH composite models with several GARCH variants, multivariate VARMAX models, and cointegration analysis. This book focuses on conditional variance models. Conditional variance models attempt to address volatility clustering in univariate time series models to improve parameter estimates and forecast accuracy. To model volatility, Econometrics Toolbox(TM) supports the standard generalized autoregressive conditional heteroscedastic (ARCH/GARCH) model, the exponential GARCH (EGARCH) model, and the Glosten, Jagannathan, and Runkle (GJR) model.
Publisher: Createspace Independent Publishing Platform
ISBN: 9781534845459
Category :
Languages : en
Pages : 204
Book Description
Econometrics Toolbox(TM) provides functions for modeling economic data. You can select and calibrate economic models for simulation and forecasting. For time series modeling and analysis, the toolbox includes univariate ARMAX/GARCH composite models with several GARCH variants, multivariate VARMAX models, and cointegration analysis. This book focuses on conditional variance models. Conditional variance models attempt to address volatility clustering in univariate time series models to improve parameter estimates and forecast accuracy. To model volatility, Econometrics Toolbox(TM) supports the standard generalized autoregressive conditional heteroscedastic (ARCH/GARCH) model, the exponential GARCH (EGARCH) model, and the Glosten, Jagannathan, and Runkle (GJR) model.
Time Series Analysis With Matlab
Author: Mara Prez
Publisher: CreateSpace
ISBN: 9781502348050
Category : Mathematics
Languages : en
Pages : 204
Book Description
MATLAB Econometrics Toolbox provides functions for modeling economic data You can select and calibrate economic models for simulation and forecasting Time series capabilities include univariate ARMAX/GARCH composite models with several GARCH variants, multivariate VARMAX models, and cointegration analysis The toolbox provides Monte Carlo methods for simulating systems of linear and nonlinear stochastic differential equations and a variety of diagnostics for model selection, including hypothesis, unit root, and stationarity tests.This book develops, among others, the following topics Conditional Variance Models GARCH Model Specify GARCH Models Using garch GARCH Model Specifications GARCH Model with a Mean Offset GARCH Model with Nonconsecutive Lags GARCH Model with Known Parameter Values GARCH Model with a t Innovation Distributio EGARCH Model Specify EGARCH Models Using egarch EGARCH Model Specifications EGARCH Model with a Mean Offset EGARCH Model with Nonconsecutive Lags EGARCH Model with Known Parameter Values EGARCH Model with a t Innovation Distribution GJR Model Specify GJR Models Using gjr GJR Model Specifications GJR Model with a Mean Offset GJR Model with Nonconsecutive Lags GJR Model with Known Parameter Values GJR Model with a t Innovation Distribution Modify Properties of Conditional Variance Model Objects Specify the Conditional Variance Model Innovation Distribution Specify a Conditional Variance Model Maximum Likelihood Estimation for Conditional Variance Models Innovation Distribution Loglikelihood Functions Conditional Variance Model Estimation with Equality Constraints Presample Data for Conditional Variance Model EstimationInitial Values for Conditional Variance Model Estimation Optimization Settings for Conditional Variance Model Estimation Conditional Variance Model Constraints Infer Conditional Variances and Residuals Likelihood Ratio Test for Conditional Variance Models Compare Conditional Variance Models Using Information Criteria Monte Carlo Simulation of Conditional Variance Models Presample Data for Conditional Variance Model Simulation Simulate GARCH Models Assess the EGARCH Forecast Bias Using Simulations Simulate Conditional Variance Model Monte Carlo Forecasting of Conditional Variance Models MMSE Forecasting of Conditional Variance Models EGARCH MMSE Forecasts Forecast GJR Models Forecast Conditional Variance Model Including an Exogenous Regression Component ARMAX Model Specifying ARMAX Models Using garchset Maximum Likelihood Estimation Initial Parameter Values for Optimization GARCHFIT Examples Estimation Presample Data GARCHSIM Examples Simulation Presample Data MMSE Forecasting GARCHPRED Examples
Publisher: CreateSpace
ISBN: 9781502348050
Category : Mathematics
Languages : en
Pages : 204
Book Description
MATLAB Econometrics Toolbox provides functions for modeling economic data You can select and calibrate economic models for simulation and forecasting Time series capabilities include univariate ARMAX/GARCH composite models with several GARCH variants, multivariate VARMAX models, and cointegration analysis The toolbox provides Monte Carlo methods for simulating systems of linear and nonlinear stochastic differential equations and a variety of diagnostics for model selection, including hypothesis, unit root, and stationarity tests.This book develops, among others, the following topics Conditional Variance Models GARCH Model Specify GARCH Models Using garch GARCH Model Specifications GARCH Model with a Mean Offset GARCH Model with Nonconsecutive Lags GARCH Model with Known Parameter Values GARCH Model with a t Innovation Distributio EGARCH Model Specify EGARCH Models Using egarch EGARCH Model Specifications EGARCH Model with a Mean Offset EGARCH Model with Nonconsecutive Lags EGARCH Model with Known Parameter Values EGARCH Model with a t Innovation Distribution GJR Model Specify GJR Models Using gjr GJR Model Specifications GJR Model with a Mean Offset GJR Model with Nonconsecutive Lags GJR Model with Known Parameter Values GJR Model with a t Innovation Distribution Modify Properties of Conditional Variance Model Objects Specify the Conditional Variance Model Innovation Distribution Specify a Conditional Variance Model Maximum Likelihood Estimation for Conditional Variance Models Innovation Distribution Loglikelihood Functions Conditional Variance Model Estimation with Equality Constraints Presample Data for Conditional Variance Model EstimationInitial Values for Conditional Variance Model Estimation Optimization Settings for Conditional Variance Model Estimation Conditional Variance Model Constraints Infer Conditional Variances and Residuals Likelihood Ratio Test for Conditional Variance Models Compare Conditional Variance Models Using Information Criteria Monte Carlo Simulation of Conditional Variance Models Presample Data for Conditional Variance Model Simulation Simulate GARCH Models Assess the EGARCH Forecast Bias Using Simulations Simulate Conditional Variance Model Monte Carlo Forecasting of Conditional Variance Models MMSE Forecasting of Conditional Variance Models EGARCH MMSE Forecasts Forecast GJR Models Forecast Conditional Variance Model Including an Exogenous Regression Component ARMAX Model Specifying ARMAX Models Using garchset Maximum Likelihood Estimation Initial Parameter Values for Optimization GARCHFIT Examples Estimation Presample Data GARCHSIM Examples Simulation Presample Data MMSE Forecasting GARCHPRED Examples
Time Series Analysis With Matlab
Author: Mara Prez
Publisher: CreateSpace
ISBN: 9781502346384
Category : Mathematics
Languages : en
Pages : 192
Book Description
MATLAB Econometrics Toolbox provides functions for modeling economic data You can select and calibrate economic models for simulation and forecasting Time series capabilities include univariate ARMAX/GARCH composite models with several GARCH variants, multivariate VARMAX models, and cointegration analysis The toolbox provides Monte Carlo methods for simulating systems of linear and nonlinear stochastic differential equations and a variety of diagnostics for model selection, including hypothesis, unit root, and stationarity tests.This book develops, among others, the following topics:Conditional Mean Models for Stationary Processes Specify Conditional Mean Models Using ARIMA Autoregressive Model AR(p) Model AR Model with No Constant Term AR Model with Nonconsecutive Lags AR Model with Known Parameter Values AR Model with a t Innovation Distribution Moving Average Model MA(q) Model Invertibility of the MA Model MA Model Specifications MA Model with No Constant Term MA Model with Nonconsecutive Lags MA Model with Known Parameter Values MA Model with a t Innovation Distribution Autoregressive Moving Average ModelARMA(p,q) Model Stationarity and Invertibility of the ARMA Model ARMA Model Specifications ARMA Model with No Constant Term ARMA Model with Known Parameter Values ARIMA Model ARIMA Model Specifications ARIMA Model with Known Parameter Values Multiplicative ARIMA Model Multiplicative ARIMA Model Specifications Seasonal ARIMA Model with No Constant Term Seasonal ARIMA Model with Known Parameter Values Specify Multiplicative ARIMA Model ARIMA Model Including Exogenous Covariates ARIMAX(p,D,q) Model ARIMAX Model Specifications Specify Conditional Mean Model Innovation Distribution Specify Conditional Mean and Variance Model Impulse Response Function Plot Impulse Response Function Box-Jenkins Differencing vs ARIMA Estimation Maximum Likelihood Estimation for Conditional Mean ModelsConditional Mean Model Estimation with Equality Constraints Initial Values for Conditional Mean Model Estimation Optimization Settings for Conditional Mean Model Estimation Estimate Multiplicative ARIMA Model Model Seasonal Lag Effects Using Indicator Variables Forecast IGD Rate Using ARIMAX Model Estimate Conditional Mean and Variance Models Choose ARMA Lags Using BIC Infer Residuals for Diagnostic Checking Monte Carlo Simulation of Conditional Mean Models Presample Data for Conditional Mean Model Simulation Transient Effects in Conditional Mean Model Simulations Simulate Stationary Processes Simulate an AR Process Simulate an MA Process Simulate Trend-Stationary and Difference-Stationary Processes Simulate Multiplicative ARIMA Models Simulate Conditional Mean and Variance Models Monte Carlo Forecasting of Conditional Mean Models Monte Carlo Forecasts MMSE Forecasting of Conditional Mean Models Forecast Error Convergence of AR Forecasts Forecast Multiplicative ARIMA Model Forecast Conditional Mean and Variance Model
Publisher: CreateSpace
ISBN: 9781502346384
Category : Mathematics
Languages : en
Pages : 192
Book Description
MATLAB Econometrics Toolbox provides functions for modeling economic data You can select and calibrate economic models for simulation and forecasting Time series capabilities include univariate ARMAX/GARCH composite models with several GARCH variants, multivariate VARMAX models, and cointegration analysis The toolbox provides Monte Carlo methods for simulating systems of linear and nonlinear stochastic differential equations and a variety of diagnostics for model selection, including hypothesis, unit root, and stationarity tests.This book develops, among others, the following topics:Conditional Mean Models for Stationary Processes Specify Conditional Mean Models Using ARIMA Autoregressive Model AR(p) Model AR Model with No Constant Term AR Model with Nonconsecutive Lags AR Model with Known Parameter Values AR Model with a t Innovation Distribution Moving Average Model MA(q) Model Invertibility of the MA Model MA Model Specifications MA Model with No Constant Term MA Model with Nonconsecutive Lags MA Model with Known Parameter Values MA Model with a t Innovation Distribution Autoregressive Moving Average ModelARMA(p,q) Model Stationarity and Invertibility of the ARMA Model ARMA Model Specifications ARMA Model with No Constant Term ARMA Model with Known Parameter Values ARIMA Model ARIMA Model Specifications ARIMA Model with Known Parameter Values Multiplicative ARIMA Model Multiplicative ARIMA Model Specifications Seasonal ARIMA Model with No Constant Term Seasonal ARIMA Model with Known Parameter Values Specify Multiplicative ARIMA Model ARIMA Model Including Exogenous Covariates ARIMAX(p,D,q) Model ARIMAX Model Specifications Specify Conditional Mean Model Innovation Distribution Specify Conditional Mean and Variance Model Impulse Response Function Plot Impulse Response Function Box-Jenkins Differencing vs ARIMA Estimation Maximum Likelihood Estimation for Conditional Mean ModelsConditional Mean Model Estimation with Equality Constraints Initial Values for Conditional Mean Model Estimation Optimization Settings for Conditional Mean Model Estimation Estimate Multiplicative ARIMA Model Model Seasonal Lag Effects Using Indicator Variables Forecast IGD Rate Using ARIMAX Model Estimate Conditional Mean and Variance Models Choose ARMA Lags Using BIC Infer Residuals for Diagnostic Checking Monte Carlo Simulation of Conditional Mean Models Presample Data for Conditional Mean Model Simulation Transient Effects in Conditional Mean Model Simulations Simulate Stationary Processes Simulate an AR Process Simulate an MA Process Simulate Trend-Stationary and Difference-Stationary Processes Simulate Multiplicative ARIMA Models Simulate Conditional Mean and Variance Models Monte Carlo Forecasting of Conditional Mean Models Monte Carlo Forecasts MMSE Forecasting of Conditional Mean Models Forecast Error Convergence of AR Forecasts Forecast Multiplicative ARIMA Model Forecast Conditional Mean and Variance Model
Multivariate Time Series Analysis With Matlab
Author: Mara Prez
Publisher: CreateSpace
ISBN: 9781502348579
Category : Mathematics
Languages : en
Pages : 176
Book Description
MATLAB Econometrics Toolbox provides functions for modeling economic data You can select and calibrate economic models for simulation and forecasting Time series capabilities include univariate ARMAX/GARCH composite models with several GARCH variants, multivariate VARMAX models, and cointegration analysis The toolbox provides Monte Carlo methods for simulating systems of linear and nonlinear stochastic differential equations and a variety of diagnostics for model selection, including hypothesis, unit root, and stationarity tests.This book develops, among others, the following topics Multivariate Time Series ModelsVector Autoregressive Models Introduction to Vector Autoregressive (VAR) Models Data Structures Model Specification Structures VAR and VARMAX Model Estimation VAR and VARMAX Model Forecasting, Simulation, and Analysis VAR and VARMAX Model Case Study Cointegration and Error Correction Introduction to Cointegration Analysis Identifying Single Cointegrating Relations Identifying Multiple Cointegrating Relations Testing Cointegrating Vectors and Adjustment Speeds
Publisher: CreateSpace
ISBN: 9781502348579
Category : Mathematics
Languages : en
Pages : 176
Book Description
MATLAB Econometrics Toolbox provides functions for modeling economic data You can select and calibrate economic models for simulation and forecasting Time series capabilities include univariate ARMAX/GARCH composite models with several GARCH variants, multivariate VARMAX models, and cointegration analysis The toolbox provides Monte Carlo methods for simulating systems of linear and nonlinear stochastic differential equations and a variety of diagnostics for model selection, including hypothesis, unit root, and stationarity tests.This book develops, among others, the following topics Multivariate Time Series ModelsVector Autoregressive Models Introduction to Vector Autoregressive (VAR) Models Data Structures Model Specification Structures VAR and VARMAX Model Estimation VAR and VARMAX Model Forecasting, Simulation, and Analysis VAR and VARMAX Model Case Study Cointegration and Error Correction Introduction to Cointegration Analysis Identifying Single Cointegrating Relations Identifying Multiple Cointegrating Relations Testing Cointegrating Vectors and Adjustment Speeds
Panel Data Econometrics
Author: Badi Hani Baltagi
Publisher:
ISBN: 9780415721417
Category : Econometrics
Languages : en
Pages : 548
Book Description
Publisher:
ISBN: 9780415721417
Category : Econometrics
Languages : en
Pages : 548
Book Description