Comparison of Classification Techniques on Energy Efficiency Dataset

Authors

  • Ahmet TOPRAK Selcuk University
  • Nigmet KOKLU Selcuk University
  • Aysegul TOPRAK Selcuk University
  • Recai OZCAN Selcuk University

DOI:

https://doi.org/10.18201/ijisae.2017534722

Keywords:

Data mining, classifications, energy efficient

Abstract

The definition of the data mining can be told as to extract information or knowledge from large volumes of data. Statistical and machine learning techniques are used for the determination of the models to be used for data mining predictions. Today, data mining is used in many different areas such as science and engineering, health, commerce, shopping, banking and finance, education and internet. This study make use of WEKA (Waikato Environment for Knowledge Analysis) to compare the different classification techniques on energy efficiency datasets. In this study 10 different Data Mining methods namely Bagging, Decorate, Rotation Forest, J48, NNge, K-Star, Naïve Bayes, Dagging, Bayes Net and JRip classification methods were applied on energy efficiency dataset that were taken from UCI Machine Learning Repository. When comparing the performances of algorithms it’s been found that Rotation Forest has highest accuracy whereas Dagging had the worst accuracy.

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Author Biographies

Ahmet TOPRAK, Selcuk University

Bozkir Vocational School, Department of Electric and Energy

Nigmet KOKLU, Selcuk University

Vocational School of Technical Sciences, Department of Construction

Aysegul TOPRAK, Selcuk University

Kadinhani Faik Icil Vocational School, Department of Electronic and Automation,

Recai OZCAN, Selcuk University

Bozkir Vocational School, Department of Electric and Energy

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Published

30.06.2017

How to Cite

TOPRAK, A., KOKLU, N., TOPRAK, A., & OZCAN, R. (2017). Comparison of Classification Techniques on Energy Efficiency Dataset. International Journal of Intelligent Systems and Applications in Engineering, 5(2), 81–85. https://doi.org/10.18201/ijisae.2017534722

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Section

Research Article