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논문검색

Hybrid Approaches Using Decision Tree, Naive Bayes, Means and Euclidean Distances for Childhood Obesity Prediction

초록

영어

Even by using the data mining, many weaknesses still existed in childhood obesity prediction and it is still far from achieving perfect prediction. This paper studies previous steps involved in childhood obesity prediction using different data mining techniques and proposed hybrid approaches to improve the accuracy of the prediction. The steps taken in this study were a review of childhood obesity, data collections, data cleaning and preprocessing, implementation of the hybrid approach, and evaluation of the proposed approach. The hybrid approach consists of the classification and regression tree, Naïve Bayes, mean value identification and Euclidean distances classification. The results from the evaluation have shown that the proposed approach has 60% sensitivity for childhood obesity prediction and 95% sensitivity for childhood overweight prediction.

목차

Abstract
 1. Introduction
 2. Data Mining Techniques
  2.1. Classification and Regression Tree
  2.2. Naive Bayes
  2.3. Euclidean Distances
 3. Proposed Hybrid Approaches
  3.1. The First Approach
  3.2. The Second Approach
 4. Experimental
  4.1. Materials and Methods
 5. Results and Discussion
  5.1. The First Approach
  5.2. The Second Approach
  5.3. A Comparison using ROC Curve
 6. Conclusion
 Acknowledgements
 References

저자정보

  • Muhamad Hariz Muhamad Adnan School of Computer Sciences, Universiti Sains Malaysia
  • Wahidah Husain School of Computer Sciences, Universiti Sains Malaysia
  • Nur'Aini Abdul Rashid School of Computer Sciences, Universiti Sains Malaysia

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