挖掘教育数据分析教师绩效的经验——以高等教育教师为例

Abdelbaset R. Almasri
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引用次数: 4

摘要

教育数据挖掘(EDM)是一种新的范式,旨在挖掘和提取优化教学过程有效性所需的知识。对于正常的教育系统工作,由于在整个系统中收集和纠缠大量数据,通常不太可能完成精细的系统优化。EDM通过挖掘和探索这些原始数据以及提取知识的能力解决了这个问题。本文描述了几个真实教育数据的实验,说明了数据挖掘在将教育数据转化为知识方面的有效性。本实验的目的首先是找出教师行为影响学生满意度的重要因素。除了展示通过实验获得的经验外,本文旨在为数据挖掘解决方案在实际应用中提供实践指导。数据预处理技术、c4.5分类算法和K-means聚类算法。关于我们有怎样的调查研究学生满意度的数据
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Experiences in Mining Educational Data to Analyze Teacher's Performance: A Case Study with High Educational Teachers
Educational Data Mining (EDM) is a new paradigm aiming to mine and extract knowledge necessary to optimize the effectiveness of teaching process. With normal educational system work it’s often unlikely to accomplish fine system optimizing due to large amount of data being collected and tangled throughout the system. EDM resolves this problem by its capability to mine and explore these raw data and as a consequence of extracting knowledge. This paper describes several experiments on real educational data wherein the effectiveness of Data Mining is explained in migration the educational data into knowledge. The experiments goal at first to identify important factors of teacher behaviors influencing student satisfaction. In addition to presenting experiences gained through the experiments, the paper aims to provide practical guidance of Data Mining solutions in a real application. data preprocessing techniques, c4.5 classification algorithm and K-means clustering algorithm. how data of survey study student-satisfaction concerning We have
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