Comparison of Data Mining Algorithm Performance on Student Savings Dataset

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Abstract

Sabilillah Educational Cash Unit is a unit within the sabilillah educational foundation which is engaged in education. The stored cash processing data will be utilized using data mining so that it can be used as a decision support for finding information that is useful in evaluating the data used. Various methods contained in the data mining, the authors will make a comparison of the method techniques from the data mining. The use of the decision tree and, K-means method is implemented using the Rapid Miner application, which will later be analysed of each of these methods to determine the strategy to look for students who have the potential to save the hajj savings. This research was conducted with a group of data to determine the percentage value of precision, recall and accuracy. The results of this study that the C.4.5 method has a better value than other methods on the recall and accuracy, while the K-Means method has a precision value better than the other methods.

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APA

Negara, Y. D. P., & Doni, A. F. (2020). Comparison of Data Mining Algorithm Performance on Student Savings Dataset. In Journal of Physics: Conference Series (Vol. 1569). IOP Publishing Ltd. https://doi.org/10.1088/1742-6596/1569/2/022081

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