Outlier robust unit root analysis


Doctoral Thesis
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This book focuses on statistical methods for discriminating between competing models for the long-run behavior of economic time series. Traditional methods that are used in this context are sensitive to outliers in the data. Therefore, this book considers alternative methods that take into account the possibility that not all observations are generated by the postulated model. These methods are called outlier robust. The basic principle underlying outlier robust methods is that discordant observations are downweighted automatically. The use of weights has important consequences for the statistical properties of the methods discussed. These consequences are studied by means of asymptotic theory, Monte-Carlo simulations, and empirical illustrations. Based on the results of this study, it is argued that outlier robust methods provide useful tools for applied researchers as the methods disclose valuable additional information about the long-run behavior of economic processes.


Supervisor (promotor):

Prof. Dr. Kloek, T.

The author wishes to thank:

Kloek, Prof. Dr. T. (promotor)


Keywords


Classifications using Journal of Economic Literature (JEL) Classification System
Automatically Extracted Terms
  • model
  • series
  • outlier
  • estimator
  • process
  • unit root hypothesis
  • value
  • result
  • mlt estimator
  • unit root tests
  • parameter
  • time series
  • student
  • student t distribution
  • chapter
  • distribution
  • unit root model
  • likelihood
  • unit root
  • i.i.d