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The Most Potential Decision Tree Technique to Classify the Large Dataset of Students

机译:最潜在的决策树技术对学生的大型数据集进行分类

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Education is one of the important fields in this challenging world. The researchers come out with the new perceptive, which is learning analytics that is a new invention for helping out the instructors, learners, and administrators. The use of learning analytics can be the medium for increasing the productivity of education for producing capable leaders in the future. Machine learning comes out with any type of techniques such as Decision Tree, Support Vector Machine, Naive Bayes, and Ensemble Classifiers. However, both Decision Tree and Ensemble Classifiers are chosen as the best potential machine learning techniques to cope with the large database of students. The Boosted Tree of Ensemble Classifiers managed to get 99.6% accuracy of training 378,005 data of students regarding the Virtual Learning Environment (VLE).
机译:教育是这一挑战性世界的重要领域之一。 研究人员出来了新的感知,这是学习分析,这是一个用于帮助教师,学习者和管理员的新发明。 学习分析的使用可以是增加未来生产能力领导者教育生产力的媒介。 机器学习采用任何类型的技术,如决策树,支持向量机,天真贝叶斯和集合分类器。 然而,选择决策树和集合分类器作为应对学生大型数据库的最佳潜在机器学习技术。 集合分类器的增强树设法培训有关虚拟学习环境(VLE)的学生培训378,005数据的准确性。

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