Performance Analysis of the Decision Tree Classification Algorithm on the Water Quality and Potability Dataset

Ensuring water potability is paramount for public health and safety. This research aimed to assess the efficacy of the Decision Tree classification algorithm in predicting water potability using the Water Quality and Potability dataset. Employing a 5-fold cross-validation technique, the model showca...

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Bibliographic Details
Published inIndonesian Journal of Data and Science Vol. 4; no. 3; pp. 145 - 150
Main Authors Zaky, Umar, Naswin, Ahmad, Sumiyatun, Sumiyatun, Murdiyanto, Aris Wahyu
Format Journal Article
LanguageEnglish
Published 31.12.2023
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ISSN2715-9930
2715-9930
DOI10.56705/ijodas.v4i3.113

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Summary:Ensuring water potability is paramount for public health and safety. This research aimed to assess the efficacy of the Decision Tree classification algorithm in predicting water potability using the Water Quality and Potability dataset. Employing a 5-fold cross-validation technique, the model showcased a moderate performance with an average accuracy of approximately 54.33%. While the Decision Tree provides a baseline and interpretable mechanism for classification, the results emphasize the need for further exploration using more intricate models or ensemble methods. This study contributes to the broader effort of leveraging machine learning techniques for water quality assessment and provides insights into the potential and limitations of such models in predicting water safety
ISSN:2715-9930
2715-9930
DOI:10.56705/ijodas.v4i3.113