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Comparing the Predictive and Classification Performances of Logistic Regression and Neural Networks: A Case Study on Timss 2011

机译:Logistic回归和神经网络的预测和分类性能比较:以Timss 2011为例

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Investigating effective factors on students’ achievement has wide application area in educational studies. Specially, Trends in International Mathematics and Science Study (TIMSS) allows researchers to determine correlates of mathematics and science achievement for different countries. In this study, the predictive and classification performances of logistic regression and neural networks are compared to identify the impact levels of variables on students’ mathematics achievement in Turkey. Age, gender and scales created by TIMSS team for 8th grade students (students like learning, value learning, confident in math, engaged in math, bullied at school, home educational resources), are selected as predictive variables. Model fitting statistics show that two methods give similar results in prediction and classification. In addition to model results, students’ confidence is found as the most effective factor to improve mathematics achievement.
机译:研究影响学生成绩的有效因素在教育研究中具有广泛的应用领域。特别是,国际数学和科学研究的趋势(TIMSS)使研究人员能够确定不同国家的数学和科学成就的相关性。在这项研究中,对逻辑回归和神经网络的预测和分类性能进行了比较,以确定变量对土耳其学生数学成绩的影响程度。 TIMSS团队为八年级学生(学习,价值观学习,对数学有信心,对数学有信心,对数学有信心,在学校受欺负,家庭教育资源等)所创建的年龄,性别和量表被选作预测变量。模型拟合统计数据表明,两种方法在预测和分类上得出相似的结果。除模型结果外,学生的自信心也是提高数学成绩的最有效因素。

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