Title of article :
An Estimation of Seasonal GDP Gap in Iran: Application of Adaptive Least Squares Method
Author/Authors :
Hadizadeh, Arash university of mazandaran, بابلسر, ايران , Jafari Samimi, Ahmad university of mazandaran, بابلسر, ايران , Elmi, Zahra Mila university of mazandaran, بابلسر, ايران
From page :
157
To page :
177
Abstract :
This paper estimates the long-term trend of seasonal real GDP in Iran, using a new econometric technique called Adaptive Least Squares (ALS). ALS is a special case of Kalman Filter that allows a time-varying parameter model to be estimated relatively easy. The estimated trend is used to proxy the output gap.Since the coefficients of the GDP lags are significantly different from zero, the model with intercept and trend and with three lags of the dependent variable has been tested in this article. The comparison of the results of ALS, OLS, HP and Kalman Filter show that the ALS method provides a better estimate. Therefore, it is suggested that the output gap estimation method provided in this paper be used in dealing with the monetary policies
Keywords :
Adaptive Least Squares , Iran , Output Gap , seasonal data
Journal title :
Iranian Economic Review (IER)
Journal title :
Iranian Economic Review (IER)
Record number :
2567532
Link To Document :
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