Ketidaktepatan Waktu Kelulusan Mahasiswa Universitas Terbuka dengan Metode Boosting Cart

Gede Suwardika, I. Suniantara, Ni Putu Nanik Hendayanti
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引用次数: 2

Abstract

The classification tree method or better known as Classification and Regression Tree (CART) has capabilities in various data conditions, but CART is less stable in changing learning data which will cause major changes in the results of the classification tree prediction. Predictive accuracy of an unstable classifier can be corrected by a combination method of many single classifiers where the prediction results of each classifier are combined into the final prediction through the majority voting process for classification or average voting for regression cases. Boosting ensemble method is one method that combines many classification trees to improve stability and determine classification predictions. This research purpose to improve the stability and predictive accuracy of CART with boosting. The case used in this study is the classification of inaccuracies in the Open University student graduation. The results of the analysis show that boosting is able to improve the accuracy of the classification of the inaccuracy of student graduation which reaches a classification prediction of 75.94% which previously reached 65.41% in the classification tree.
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大学学生的毕业时间不允许使用助推器方法
分类树方法或更广为人知的分类与回归树(CART)在各种数据条件下都有能力,但CART在改变学习数据时不太稳定,这会导致分类树预测的结果发生重大变化。不稳定分类器的预测精度可以通过多个单一分类器的组合方法来修正,其中每个分类器的预测结果通过分类的多数投票过程或回归情况的平均投票过程组合成最终预测。增强集成方法是一种结合多个分类树来提高稳定性和确定分类预测的方法。本研究的目的是提高CART的稳定性和预测精度。本研究使用的案例是开放大学学生毕业不准确分类。分析结果表明,增强能够提高学生毕业不准确分类的准确率,达到了75.94%的分类预测,而之前在分类树中的分类预测准确率为65.41%。
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