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A machine learning approximation of the 2015 Portuguese high school student grades: A hybrid approach

机译:2015年葡萄牙高中学生成绩的机器学习近似:混合方法

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This article uses an anonymous 2014-15 school year dataset from the Directorate-General for Statistics of Education and Science (DGEEC) of the Portuguese Ministry of Education as a means to carry out a predictive power comparison between the classic multilinear regression model and a chosen set of machine learning algorithms. A multilinear regression model is used in parallel with random forest, support vector machine, artificial neural network and extreme gradient boosting machine stacking ensemble implementations. Designing a hybrid analysis is intended where classical statistical analysis and artificial intelligence algorithms are blended to augment the ability to retain valuable conclusions and well-supported results. The machine learning algorithms attain a higher level of predictive ability. In addition, the stacking appropriateness increases as the base learner output correlation matrix determinant increases and the random forest feature importance empirical distributions are correlated with the structure ofp-values and the statistical significance test ascertains of the multiple linear model. An information system that supports the nationwide education system should be designed and further structured to collect meaningful and precise data about the full range of academic achievement antecedents. The article concludes that no evidence is found in favour of smaller classes.
机译:本文使用从总局对教育的葡萄牙教育部和科学(DGEEC)的统计匿名2014-15学年的数据集为手段,以开展经典多元线性回归模型和选择之间的预测能力比较一套机器学习算法。阿多线性回归模型并行使用与随机森林,支持向量机,神经网络和极端梯度升压机堆叠合奏实现。设计一个混合分析的目的是其中经典的统计分析和人工智能算法混合,以增加保留有价值的结论,支持全面的结果的能力。机器学习算法得到的预测能力较高的水平。此外,堆叠适当性随着基学习输出相关矩阵行列式增加并且随机森林特征重要性经验分布与结构相关的OFP值和所述多个线性模型的统计显着性检验查明。一个信息系统,支持全国教育系统的设计应该和进一步构造为,收集有关全系列学术成果来路有意义和精确的数据。文章的结论是,没有证据支持小班的发现。

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