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Estimation of Dynamic Models with Error Components

Estimation of Dynamic Models with Error Components PDF Author: Theodore Wilbur Anderson
Publisher:
ISBN:
Category : Econometrics
Languages : en
Pages : 52

Book Description


Estimation of Dynamic Models with Error Components

Estimation of Dynamic Models with Error Components PDF Author: Theodore Wilbur Anderson
Publisher:
ISBN:
Category : Econometrics
Languages : en
Pages : 52

Book Description


Formulation and Estimation of Dynamic Models Using Panel Data

Formulation and Estimation of Dynamic Models Using Panel Data PDF Author: Theodore Wilbur Anderson
Publisher:
ISBN:
Category : Economics
Languages : en
Pages : 98

Book Description


Efficient Estimation of Dynamic Error Components Models with Panel Data

Efficient Estimation of Dynamic Error Components Models with Panel Data PDF Author: Lung-Fei Lee
Publisher:
ISBN:
Category :
Languages : en
Pages : 33

Book Description


The Econometrics of Panel Data

The Econometrics of Panel Data PDF Author: László Mátyás
Publisher: Springer Science & Business Media
ISBN: 9400901372
Category : Business & Economics
Languages : en
Pages : 944

Book Description
The aim of this volume is to provide a general overview of the econometrics of panel data, both from a theoretical and from an applied viewpoint. Since the pioneering papers by Edwin Kuh (1959), Yair Mundlak (1961), Irving Hoch (1962), and Pietro Balestra and Marc Nerlove (1966), the pooling of cross sections and time series data has become an increasingly popular way of quantifying economic relationships. Each series provides information lacking in the other, so a combination of both leads to more accurate and reliable results than would be achievable by one type of series alone. Over the last 30 years much work has been done: investigation of the properties of the applied estimators and test statistics, analysis of dynamic models and the effects of eventual measurement errors, etc. These are just some of the problems addressed by this work. In addition, some specific diffi culties associated with the use of panel data, such as attrition, heterogeneity, selectivity bias, pseudo panels etc., have also been explored. The first objective of this book, which takes up Parts I and II, is to give as complete and up-to-date a presentation of these theoretical developments as possible. Part I is concerned with classical linear models and their extensions; Part II deals with nonlinear models and related issues: logit and pro bit models, latent variable models, duration and count data models, incomplete panels and selectivity bias, point processes, and simulation techniques.

Modelling and Parameter Estimation of Dynamic Systems

Modelling and Parameter Estimation of Dynamic Systems PDF Author: J.R. Raol
Publisher: IET
ISBN: 0863413633
Category : Mathematics
Languages : en
Pages : 405

Book Description
This book presents a detailed examination of the estimation techniques and modeling problems. The theory is furnished with several illustrations and computer programs to promote better understanding of system modeling and parameter estimation.

The Econometrics of Panel Data

The Econometrics of Panel Data PDF Author: László Mátyás
Publisher: Springer Science & Business Media
ISBN: 9400903758
Category : Business & Economics
Languages : en
Pages : 564

Book Description
The aim of this volume is to provide a general overview of the econometrics of panel data, both from a theoretical and from an applied viewpoint. Since the pioneering papers by Kuh (1959), Mundlak (1961), Hoch (1962), and Balestra and Nerlove (1966), the pooling of cross section and time series data has become an increasingly popular way of quantifying economic relationships. Each series provides information lacking in the other, so a combination of both leads to more accurate and reliable results than would be achievable by one type of series alone. Over the last 30 years much work has been done: investigation of the properties of the applied estimators and test statistics, analysis of dynamic models and the effects of eventual measurement errors, etc. These are just some of the problems addressed by this work. In addition, some specific diffi culties associated with the use of panel data, such as attrition, heterogeneity, selectivity bias, pseudo panels etc., have also been explored. The first objective of this book, which takes up Parts I and II, is to give as complete and up-to-date a presentation of these theoretical developments as possible. Part I is concerned with classical linear models and their extensions; Part II deals with nonlinear models and related issues: logit and probit models, latent variable models, incomplete panels and selectivity bias, and point processes.

Maximum likelihood estimation in dynamic error components models

Maximum likelihood estimation in dynamic error components models PDF Author: A. Trognon
Publisher:
ISBN:
Category :
Languages : fr
Pages : 0

Book Description


Dynamic Factor Models

Dynamic Factor Models PDF Author: Siem Jan Koopman
Publisher: Emerald Group Publishing
ISBN: 1785603523
Category : Business & Economics
Languages : en
Pages : 685

Book Description
This volume explores dynamic factor model specification, asymptotic and finite-sample behavior of parameter estimators, identification, frequentist and Bayesian estimation of the corresponding state space models, and applications.

Minimum Distance Estimation of Dynamic Models with Errors-in-Variables

Minimum Distance Estimation of Dynamic Models with Errors-in-Variables PDF Author: Nikolay Gospodinov
Publisher:
ISBN:
Category :
Languages : en
Pages : 37

Book Description
Empirical analysis often involves using inexact measures of desired predictors. The bias created by the correlation between the problematic regressors and the error term motivates the need for instrumental variables estimation. This paper considers a class of estimators that can be used when external instruments may not be available or are weak. The idea is to exploit the relation between the parameters of the model and the least squares biases. In cases when this mapping is not analytically tractable, a special algorithm is designed to simulate the latent predictors without completely specifying the processes that induce the biases. The estimators perform well in simulations of the autoregressive distributed lag model and the dynamic panel model. The methodology is used to re-examine the Phillips curve, in which the real activity gap is latent.

Dynamic Systems Models

Dynamic Systems Models PDF Author: Josif A. Boguslavskiy
Publisher: Springer
ISBN: 3319040367
Category : Science
Languages : en
Pages : 219

Book Description
This monograph is an exposition of a novel method for solving inverse problems, a method of parameter estimation for time series data collected from simulations of real experiments. These time series might be generated by measuring the dynamics of aircraft in flight, by the function of a hidden Markov model used in bioinformatics or speech recognition or when analyzing the dynamics of asset pricing provided by the nonlinear models of financial mathematics. Dynamic Systems Models demonstrates the use of algorithms based on polynomial approximation which have weaker requirements than already-popular iterative methods. Specifically, they do not require a first approximation of a root vector and they allow non-differentiable elements in the vector functions being approximated. The text covers all the points necessary for the understanding and use of polynomial approximation from the mathematical fundamentals, through algorithm development to the application of the method in, for instance, aeroplane flight dynamics or biological sequence analysis. The technical material is illustrated by the use of worked examples and methods for training the algorithms are included. Dynamic Systems Models provides researchers in aerospatial engineering, bioinformatics and financial mathematics (as well as computer scientists interested in any of these fields) with a reliable and effective numerical method for nonlinear estimation and solving boundary problems when carrying out control design. It will also be of interest to academic researchers studying inverse problems and their solution.