Ranking provinces based on development scale in agriculture sector using taxonomy technique


Shahram Rostampour


The purpose of this paper is to determine comparative ranking of agricultural development in different provinces of Iran using taxonomy technique. The independent variables are amount of annual rainfall amount, the number of permanent rivers, the width of pastures and forest, cultivated level of agricultural harvests and garden harvests, the number of beehives, the number of fish farming ranches, the number of tractors and combines, the number of cooperative production societies, the number of industrial cattle breeding and aviculture. The results indicate that the maximum development coefficient value is associated with Razavi Khorasan province followed by Mazandaran, East Azarbayjan while the minimum ranking value belongs to Bushehr province.


DOI: j.msl.2012.04.003

Keywords: Ranking ,Taxonomy ,Comparative development ,Data Envelopment Analysis

How to cite this paper:

Rostampour, S. (2012). Ranking provinces based on development scale in agriculture sector using taxonomy technique.Management Science Letters, 2(5), 1813-1818.


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