A comparison of genetic algorithm and auto -regressive distributed lag model in determination of total factors productivity growth in the agricultural sector of iran

2016 
ARTICLE INFO ABSTRACTDue to the important role productivity plays in future decision making and programming, the productivity indexes should have accurate quantities. In this study, Auto-Regressive Distributed Lag (ARDL) and Genetic Algorithm (GA) methods are applied to time series of 1978-2008 to accurately measure total factor productivity (TFP) in the agricultural sector of Iran. The comparison of these two methods shows that GA method is more efficient than ARDL model. Also, the growth of TFP in the agricultural sector of Iran has had high fluctuations and annual average of productivity growth in this sector has been -0.16 during the period of the study. Therefore, it is necessary to emphasize the optimum use of available inputs, their appropriate combinations and increasing productivity in the agricultural sector of Iran. Article history: Received 10 November 2012 Accepted 7 December 2015 Available online 9 January 2016
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