Dengue Fever Prediction: A Data Mining Problem

  • Shaukat Dar K
  • Ulya Azmeen S
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Abstract

Dengue is a threatening disease caused by female mosquitos. It is typically found in widespread hot regions. From long periods of time, Experts are trying to find out some of features on Dengue disease so that they can rightly categorize , Islamabad Campus. Pakistan Sundas Mehreen1 and Ulya Azmeen1 patients because different patients require different types of treatment. Pakistan has been target of Dengue disease from last few years. Dengue fever is used in classification techniques to evaluate and compare their performance. The dataset was collected from District Headquarter Hospital (DHQ) Jhelum. For properly categorizing our dataset, different classification techniques are used. These techniques are Naïve Bayesian, REP Tree, Random tree, J48 and SMO. WEKA was used as Data mining tool for classification of data. Firstly we will evaluate the performance of all the techniques separately with the help of tables and graphs depending upon dataset and secondly we will compare the performance of all the techniques.

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Shaukat Dar, K., & Ulya Azmeen, S. M. (2015). Dengue Fever Prediction: A Data Mining Problem. Journal of Data Mining in Genomics & Proteomics, 06(03). https://doi.org/10.4172/2153-0602.1000181

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