Dynamic econometrics : models and applications
Description
Francis BISMANS and Olivier DAMETTE. Dynamic econometrics : models and applications. Cham : Palgrave Macmillan, 2025, print book + e-book!
This book is a bold and confident advance in dynamic econometric theory and practice.” I. Litvine, Professor in Statistics, Nelson Mandela University, Port Elizabeth, South Africa “This book is an outstanding contribution to econometrics, coming at a crucial time to fill a significant gap in the field.” Maria do Rosário Grossinho, Professor of Analysis and Mathematical Finance ISEG - University of Lisbon Portugal This textbook for advanced econometrics students introduces key concepts of dynamic non-stationary modelling. It discusses all the classic topics in time series analysis and linear models containing multiple equations, as well as covering panel data models, and non-linear models of qualitative variables. The book offers a general introduction to dynamic econometrics and covers topics including non-stationary stochastic processes, unit root tests, Monte Carlo simulations, heteroskedasticity, autocorrelation, cointegration and error correction mechanism, models specification, and vector autoregressions. Going beyond advanced dynamic analysis, the book also meticulously analyses the classical linear regression model (CLRM) and introduces students to estimation and testing methods for the more advanced auto-regressive distributed lag (ARDL) model.
This book is a bold and confident advance in dynamic econometric theory and practice.” I. Litvine, Professor in Statistics, Nelson Mandela University, Port Elizabeth, South Africa “This book is an outstanding contribution to econometrics, coming at a crucial time to fill a significant gap in the field.” Maria do Rosário Grossinho, Professor of Analysis and Mathematical Finance ISEG - University of Lisbon Portugal This textbook for advanced econometrics students introduces key concepts of dynamic non-stationary modelling. It discusses all the classic topics in time series analysis and linear models containing multiple equations, as well as covering panel data models, and non-linear models of qualitative variables. The book offers a general introduction to dynamic econometrics and covers topics including non-stationary stochastic processes, unit root tests, Monte Carlo simulations, heteroskedasticity, autocorrelation, cointegration and error correction mechanism, models specification, and vector autoregressions. Going beyond advanced dynamic analysis, the book also meticulously analyses the classical linear regression model (CLRM) and introduces students to estimation and testing methods for the more advanced auto-regressive distributed lag (ARDL) model.