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首页> 外文期刊>Journal of Advanced Computatioanl Intelligence and Intelligent Informatics >Using Data Mining on Students' Learning Features: A Clustering Approach for Student Classification
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Using Data Mining on Students' Learning Features: A Clustering Approach for Student Classification

机译:使用数据挖掘对学生的学习功能:学生分类的聚类方法

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Students have different levels of motivation, approaches to learning, and intellectual levels. The better that instructors understand these differences, the better the chances they have of improving their quality of teaching. To explore differences thoroughly, we focuses on three crucial factors in student learning features - i.e., personality, learning style and multiple intelligences - and propose an approach effective in classifying students for the purpose of instructing instructors while optimizing their teaching process. We collected data on learning features from a class of 58 college students and analyzed these data by using principal component analysis (PCA) and then classified them using Ward clustering. Results of experiments indicate that our proposal effectively classifies students based on their learning features and that classification results facilitate instructors in creating personalized teaching strategies.
机译:学生的动机、学习方法和智力水平各不相同。教师越了解这些差异,就越有可能提高教学质量。为了深入探讨差异,我们关注学生学习特征中的三个关键因素,即个性、学习风格和多元智能,并提出一种有效的学生分类方法,以指导教师优化教学过程。我们收集了58名大学生的学习特征数据,并使用主成分分析(PCA)对这些数据进行分析,然后使用Ward聚类对其进行分类。实验结果表明,我们的建议有效地根据学生的学习特点对学生进行分类,分类结果有助于教师制定个性化的教学策略。

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