Unsupervised Discretization of Continuous Variables in a Chicken Egg Quality Traits Dataset
DOI:
https://doi.org/10.24925/turjaf.v5i4.315-320.1056Keywords:
Data preprocessing, Discretization, Unsupervised discretization, Egg quality traitsAbstract
Discretization is a data pre-processing task transforming continuous variables into discrete ones in order to apply some data mining algorithms such as association rules extraction and classification trees. In this study we empirically compared the performances of equal width intervals (EWI), equal frequency intervals (EFI) and K-means clustering (KMC) methods to discretize 14 continuous variables in a chicken egg quality traits dataset. We revealed that these unsupervised discretization methods can decrease the training error rates and increase the test accuracies of the classification tree models. By comparing the training errors and test accuracies of the model applied with C5.0 classification tree algorithm we also found that EWI, EFI and KMC methods produced the more or less similar results. Among the rules used for estimating the number of intervals, the Rice rule gave the best result with EWI but not with EFI. It was also found that Freedman-Diaconis rule with EFI and Doane rule with EFI and EWI slightly performed better than the other rules.Downloads
Published
05.04.2017
How to Cite
Cebeci, Z., & Yıldız, F. (2017). Unsupervised Discretization of Continuous Variables in a Chicken Egg Quality Traits Dataset. Turkish Journal of Agriculture - Food Science and Technology, 5(4), 315–320. https://doi.org/10.24925/turjaf.v5i4.315-320.1056
Issue
Section
Animal Production
License
This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.