Predictive Data Modeling: Educational Data Classification and Comparative Analysis of Classifiers Using Python

P. Guleria, M. Sood
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引用次数: 4

Abstract

Due to an increase in the number of data sources and digital community, there is a huge amount of unstructured data at almost every synergy and in such outline, data mining becomes an important field of Machine Learning. Machine learning can be used for data mining following its two approaches i.e. Supervised learning and Unsupervised learning to find out meaningful information from huge accumulated unstructured data. To increase the quality of education and to find a solution to problems soaring from the complicated educational dataset and contentious environment among the academic institutions, educational data mining is receiving great attention. Educational data mining helps in facilitation and utilization of resources related to student performance, predicting placement results and finding new educational trends. In this paper, classification of student's data in terms of internal assessment given by faculty members and visualization of an educational dataset using Python following multiple Data based classification prediction models and comparative results of classifier models are performed. The classifier models using python which can transform learning are compared and the model having best accuracy measure is considered for predictive analytics and classification of the overall performance of class.
预测数据建模:使用Python的教育数据分类和分类器的比较分析
由于数据源和数字社区数量的增加,几乎每次协同都有大量的非结构化数据,在这样的框架下,数据挖掘成为机器学习的一个重要领域。机器学习可以通过有监督学习和无监督学习两种方法进行数据挖掘,从大量积累的非结构化数据中发现有意义的信息。为了提高教育质量,解决复杂的教育数据集和学术机构之间的争议环境中出现的问题,教育数据挖掘受到了人们的广泛关注。教育数据挖掘有助于促进和利用与学生表现有关的资源,预测分班结果和发现新的教育趋势。在本文中,根据教师给出的内部评估对学生数据进行分类,并使用Python根据多个基于数据的分类预测模型和分类器模型的比较结果对教育数据集进行可视化。比较了使用python进行转换学习的分类器模型,并考虑了具有最佳精度度量的模型用于类的整体性能的预测分析和分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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