An Empirical Model of Regional Growth using Adaptive Neuro-Fuzzy Inference System

نویسندگان

  • Abhishek Pandey
  • Ashok K Sinha
  • Arshdeep Kaur
  • Amrit Kaur
  • Naveed Anwer
  • Aneela Abbas
  • Aneela Mazhar
  • Syed Hassan
چکیده

In India the socio-economic development of different states is spatially heterogeneous. The states can be broadly classified into three categories viz; developed, developing and underdeveloped. The development status of states falling under any one category is influenced by its socio-economic parameters. The earlier studies on regional development have analyzed the socio-economic data but no effort has been made to empirically establish the relationship among the variables in the data. . The proposed model presents an empirical model for estimating the socio-economic status of states based on Gross State Domestic Product (GSDP). The model correlating the GSDP with socio-economic parameters uses ANFIS tool for machine learning. The model so developed yields a reasonably acceptable result.

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تاریخ انتشار 2015