Identification of models-decision tree and random forest classifier using rattle on diabetes disease

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Abstract

Diabetes is the disease which is growing now a days in human body and there are a number of patient who are suffering by this diabetes in the world. The data related to medical area is very huge which is related to the many disease. So the first thing is that we have to choose a mining tool which give best result for the given databases. Because, this medical data is statistical and most of the researchers using this type of data. Data mining tool is used for the extracting better result in accuracy for the diabetes data base. By the data mining techniques the medical expert and researchers analyze the result and provide the best treatment for this disease. In this paper we are using diabetes data and apply it on the Rattle, an open source tool of data mining and perform two classification methods decision tree and random forest tree for classify the data and show that which classification algorithm is best for diabetes dataset.

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APA

Chauhan, A., & Garg, A. (2019). Identification of models-decision tree and random forest classifier using rattle on diabetes disease. International Journal of Innovative Technology and Exploring Engineering, 8(9 Special Issue 2), 172–176. https://doi.org/10.35940/ijitee.I1033.0789S219

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