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Klasifikasi Daerah Kabupaten/Kota Di Propinsi Maluku Berdasarkan Tipologi Klassen

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  • LARATMASE, PAULUS

Abstract

This study aims to determine the classification of regions (districts / cities) in Maluku Province based on the Klassen typology. This research was conducted in Maluku Province with the consideration that Maluku is one of the provinces with a GDP level, PDR growth rate, and a relatively small GDP per capita compared to the Provinces in Indonesia, but with the potential it has a possibility to increase economic growth. This study uses secondary data in the form of data on Gross Regional Domestic Product (GRDP) on the basis of constant prices, both growth rates, contributions and GDP per capita. The data collection method used, namely the documentation method, then carried out the analysis using the Klassen Typology analysis tool, Based on the results of the study there were 2 Cities and 1 District classified as fast-developing and fast-growing regions, fast developing regions consisting of two Regencies, Districts / Cities classified in the classification of advanced but depressed areas / potential to be left behind consists of 3 Three Districts. Regency / City Region classified as relatively underdeveloped region consists of 3 Districts

Suggested Citation

  • Laratmase, Paulus, 2021. "Klasifikasi Daerah Kabupaten/Kota Di Propinsi Maluku Berdasarkan Tipologi Klassen," Thesis Commons cns79, Center for Open Science.
  • Handle: RePEc:osf:thesis:cns79
    DOI: 10.31219/osf.io/cns79
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