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Prediction Analysis Student Graduate Using Multilayer Perceptron

机译:预测分析学生使用多层情人毕业

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Student graduation data is a data that is important to the College, especially for the Faculty as well as the courses in question. Acquisition of knowledge in a database (a number of large data) commonly referred to as data mining. This research aims to analyze the student's graduation predictions that can be done on a fourth semester using Multilayer Perceptron (MLP) classifier which available in WEKA software implementations. Then do the testing and performance comparisons of MLP against Naive Bayes classification, IBk and Tree J48. Cross Validation and Percentage Split are used as the testing procedure in this research. The parameters in the process of testing using correctly classified instances and Root Mean Squared Error (RMSE). On the mode of Cross Validation, MLP has better performance compared to all contender methods with accuracy of J48 81.82% and the value of the smallest RSME i.e. 0.273. On a Percentage Split MLP mode has the same accuracy value with Naive Bayes i.e. 92.31%, and the value of the RMSE on the MLP of 0.182.
机译:学生毕业数据是对学院重要的数据,特别是对于教师以及有问题的课程。在通常称为数据挖掘的数据库(许多大数据)中获取知识。本研究旨在分析学生的毕业预测,可以使用Weka软件实现中可用的Multidayer Perceptron(MLP)分类器在第四学期进行。然后对Naive Bayes分类,IBK和Tree J48进行MLP的测试和性能比较。交叉验证和百分比拆分用作本研究中的测试程序。使用正确分类的实例和根均方误差(RMSE)进行测试过程中的参数。在交叉验证模式下,与所有竞争者方法相比,MLP具有更好的性能,精度为J48 81.82%和最小RSME的值,即0.273。在百分比上,分割MLP模式具有与Naive Bayes I. 92.31%相同的精度值,并在0.182的MLP上的RMSE值。

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