学生安置预测

PujhaShree S.B, Lekhasree R, Logasri P, Darling Jemima.D
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引用次数: 0

摘要

在教育机构中,最重要的目标是安置学生。对于每一个学生来说,安置部分是大学生活中非常重要的一部分,因为对一些学生来说,它是未来。对学生的预测不会100%准确,但这取决于学生在实习的每个部分的表现。因此,为了预测当前学生的就业机会,我们可以分析上一年度的学生数据。数据是从该机构收集的,并对模型应用了一定的预处理技术。不同的算法具有不同的精度。根据问题的类型和要解决的数据集,不同的算法具有不同的精度水平。因此,我们决定评估三种方法的准确性水平,即逻辑回归,决策树分类器和随机森林分类器,相对于我们的挑战和数据集。对每个模型的效率/准确性进行了可视化和测试,并在性能分析的基础上宣布了最佳模型结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
STUDENT PLACEMENT PREDICTION
In an educational institution, the most important objective is the placement of students. For each and every student, the placement part is a very important one in college life because for some sets of students it is the future. The prediction of students will not be 100% accurate but it depends how the students perform in every part of the placement. So, to predict the placement package chance of current students, we can analyze the previous year’s students data. The data has been collected from the institution and certain pre-processing techniques are applied to the models. Different algorithms have different accuracy. Depending on the type of issue and dataset to be solved, different algorithms have varied levels of accuracy. As a result, we decided to assess the accuracy levels of three methods, namely Logistic Regression, Decision Tree Classifier, and Random Forest Classifier, with respect to our challenge and dataset. The efficiency/accuracy of each model is visualized and tested and based on the performance analysis, the best model results are declared.
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