Title of article :
The EKC: Some really disturbing Monte Carlo evidence
Author/Authors :
Tom Verbeke*، نويسنده , , Marc De Clercq، نويسنده ,
Issue Information :
دوهفته نامه با شماره پیاپی سال 2006
Abstract :
In many fields of the economics discipline, much of the empirical work includes a thorough analysis of time series data. In
environmental economics, however, such an analysis is often neglected. This is unfortunate for two reasons. First, as Lee and
List (2004. Examining trends of criteria air pollutants: ere the effects of government intervention transitory? Environmental and
Resource Economics 29 (1), 21e37) argue, time series analysis can provide many new insights relevant in modelling work or in
forwarding policy advice. Secondly, the nature of the time series has a profound impact on the modelling work. This paper shows
that such an analysis is a necessity. We illustrate this with a Monte Carlo investigation of an Environmental Kuznets type of transition
between non-stationary variables.
The Environmental Kuznets Curve hypothesis posits an inverse U-shaped relation between environmental pollution and income.
Although both pollution and income may be stochastically trending, the empirical literature has largely ignored this property.
Through Monte Carlo experiments we show that with stochastically trending series, regression analysis spuriously confirms the
EKC hypothesis in 40% of the cases.
Keywords :
Environmental Kuznets Curve hypothesis , cointegration , I(1) , Monte Carlo
Journal title :
Environmental Modelling and Software
Journal title :
Environmental Modelling and Software