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Customized Prediction Model to Predict Post- Graduation Course for Graduating Students Using Decision Tree Classifier

机译:定制的预测模型,用于使用决策树分类器预测即将毕业的学生的研究生课程

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Background/Objectives: Excellence of Universities is based on students' success in their academic and it is possible if the students are instructed or counseled before getting admitted in their post graduation. So, we have developed a model for the post graduating students to utilize their intelligence in right direction. Methods/Statistical Analysis: If students are given admission in right course then their academic success is guaranteed by the university. To formulate the prediction, decision tree classifiers are best suitable as it has potential to generate comprehensible output. It is generating the tree and rules which will be used to formulate the predictions. Hence, this approach is of two steps approach known as training phase and testing phase. Findings: The model trains on the basis of the defined instances and from the defined instances the classified builds the rules. These rules are used to formulate prediction for unknown valued instances. This article depicts the customized classification model to predict the Post-Graduation degree of the students. The model is based on J48 decision tree algorithm for classification. The model is trained by the data collected through survey of different institutions with the purpose of differentiating and predicting students' choice and to generate unbiased result. We obtained certain patterns of the students preferences to select their post graduation course. On the basis of such rules which are derived from historical data, are used to predict post graduation course for unknown instance. We have used J48 classification algorithm for decision tree to predict the post graduation course based on their academic history and other identified parameters. We have identified total 14 parameters to predict the class label of 15thattribute. Applications/Improvements: We have customized a model using Weka which uses the J48 algorithm to predict students' post graduation degree. We have obtained 94.03% accuracy of prediction against 4 classes as final attribute.
机译:背景/目标:大学的卓越成就取决于学生的学术成就,有可能在毕业后被录取之前对学生进行指导或咨询。因此,我们为毕业后的学生开发了一个模型,以正确地利用他们的智力。方法/统计分析:如果学生被录取了正确的课程,那么大学将保证他们的学业成功。为了制定预测,决策树分类器最适合,因为它有可能产生可理解的输出。它正在生成将用于制定预测的树和规则。因此,此方法分为两个步骤,即训练阶段和测试阶段。结果:模型在定义的实例的基础上进行训练,分类器根据定义的实例构建规则。这些规则用于为未知值实例制定预测。本文介绍了定制的分类模型,以预测学生的毕业后程度。该模型基于J48决策树算法进行分类。该模型是通过对不同机构进行调查而收集的数据来训练的,目的是区分和预测学生的选择,并产生公正的结果。我们获得了学生选择毕业后课程的某些偏好模式。根据这些从历史数据得出的规则,可用于预测未知实例的毕业后进程。我们已经使用决策树的J48分类算法,根据他们的学术历史和其他确定的参数来预测毕业后的课程。我们已经识别出总共14个参数,以预测15thattribute的类标签。应用程序/改进:我们使用Weka定制了一个模型,该模型使用J48算法来预测学生的毕业程度。我们获得了对4个类作为最终属性的预测准确性为94.03%。

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