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Econometric modelling with time series : specification, estimation and testing / Vance Martin.

By: Contributor(s): Material type: TextTextSeries: Themes in modern econometricsPublication details: Cambridge : Cambridge University Press, 2013.Description: xxxv, 887 p. : ill. ; 25 cmISBN:
  • 9780521139816
Subject(s): LOC classification:
  • HB141 .M3555 2013
Summary: "This book provides a general framework for specifying, estimating, and testing time series econometric models"--Summary: "Maximum likelihood estimation is a general method for estimating the parameters of econometric models from observed data. The principle of maximum likelihood plays a central role in the exposition of this book, since a number of estimators used in econometrics can be derived within this framework. Examples include ordinary least squares, generalized least squares and full-information maximum likelihood. In deriving the maximum likelihood estimator, a key concept is the joint probability density function (pdf) of the observed random variables, yt. Maximum likelihood estimation requires that the following conditions are satisfied. (1) The form of the joint pdf of yt is known. (2) The specification of the moments of the joint pdf are known. (3) The joint pdf can be evaluated for all values of the parameters, 9. Parts ONE and TWO of this book deal with models in which all these conditions are satisfied. Part THREE investigates models in which these conditions are not satisfied and considers four important cases. First, if the distribution of yt is misspecified, resulting in both conditions 1 and 2 being violated, estimation is by quasi-maximum likelihood (Chapter 9). Second, if condition 1 is not satisfied, a generalized method of moments estimator (Chapter 10) is required. Third, if condition 2 is not satisfied, estimation relies on nonparametric methods (Chapter 11). Fourth, if condition 3 is violated, simulation-based estimation methods are used (Chapter 12). 1.2 Motivating Examples To highlight the role of probability distributions in maximum likelihood estimation, this section emphasizes the link between observed sample data and 4 The Maximum Likelihood Principle the probability distribution from which they are drawn"--
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Holdings
Item type Current library Collection Call number Vol info Status Date due Barcode
Main Long Main Long KCA Kitengela Campus Library Non-fiction HB141 .M3555 2013 (Browse shelf(Opens below)) 27317/14 Available MOOL14061373
Main Long Main Long Martin Oduor-Otieno Library This item is located on the library first floor Non-fiction HB141 .M3555 2013 (Browse shelf(Opens below)) 27315/14 Available MOOL14061375
Main Long Main Long Martin Oduor-Otieno Library This item is located on the library first floor Non-fiction HB141 .M3555 2013 (Browse shelf(Opens below)) 27316/14 Available MOOL14061374
Main Long Main Long Martin Oduor-Otieno Library This item is located on the library first floor Non-fiction HB141 .M3555 2013 (Browse shelf(Opens below)) 27318/14 Available MOOL14061372
Main Long Main Long Martin Oduor-Otieno Library This item is located on the library first floor Non-fiction HB141 .M3555 2013 (Browse shelf(Opens below)) 27319/14 Available MOOL14061371

Includes bibliographical references (pages 865-876) and indexes.

"This book provides a general framework for specifying, estimating, and testing time series econometric models"--

"Maximum likelihood estimation is a general method for estimating the parameters of econometric models from observed data. The principle of maximum likelihood plays a central role in the exposition of this book, since a number of estimators used in econometrics can be derived within this framework. Examples include ordinary least squares, generalized least squares and full-information maximum likelihood. In deriving the maximum likelihood estimator, a key concept is the joint probability density function (pdf) of the observed random variables, yt. Maximum likelihood estimation requires that the following conditions are satisfied. (1) The form of the joint pdf of yt is known. (2) The specification of the moments of the joint pdf are known. (3) The joint pdf can be evaluated for all values of the parameters, 9. Parts ONE and TWO of this book deal with models in which all these conditions are satisfied. Part THREE investigates models in which these conditions are not satisfied and considers four important cases. First, if the distribution of yt is misspecified, resulting in both conditions 1 and 2 being violated, estimation is by quasi-maximum likelihood (Chapter 9). Second, if condition 1 is not satisfied, a generalized method of moments estimator (Chapter 10) is required. Third, if condition 2 is not satisfied, estimation relies on nonparametric methods (Chapter 11). Fourth, if condition 3 is violated, simulation-based estimation methods are used (Chapter 12). 1.2 Motivating Examples To highlight the role of probability distributions in maximum likelihood estimation, this section emphasizes the link between observed sample data and 4 The Maximum Likelihood Principle the probability distribution from which they are drawn"--

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