USING EDUCATIONAL DATA MINING IN ASSESSMENT OF STUDENT ACHIEVEMENT

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Abstract

Education is the deliberate enculturation process in general. The concept of deliberation here emphasizes a program that does not leave expectations to coincidences and thus excludes unwanted situations. No matter how accurately and effectively this program is organized, quality control is still carried out at the end of the process with assessment and evaluation processes. The assessment and evaluation processes in education provide feedback in terms of the effectiveness of both the student and the program. This would also lead to an effective reorganization of the process. One of the problems faced during the transition from product or outcome based student assessment approaches to process-based alternative assessment approaches is the difficulty in evaluating the student data collected by more than one alternative assessment instruments. Using all the data about the student in determining the academic achievement of students affects the success of process assessment approach positively. Educational Data Mining is the computer aided search of the relations and rules that enable us to make predictions about the present and the future through the use of the massive amount of data concerning the educational process obtained from various sources. With this process, patterns, similarities and correlations that are in a large data warehouse can be determined and interpreted by using any of pattern recognition methods. Through enabling holistic evaluation of data obtained by process evaluation oriented assessment instruments such as portfolio, rubrics, self and peer assessment, performance assessment etc. it will be possible to obtain the relations concerning not only students’ academic achievement but also students, teachers, schools and courses. Keywords: Assessment, alternative assessment, data mining, educational data mining
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教育数据挖掘在学生成绩评价中的应用
一般来说,教育是有意识的文化适应过程。这里的深思熟虑的概念强调的是一个程序,它不把期望留给巧合,从而排除不必要的情况。无论这个程序组织得多么准确和有效,质量控制仍然是在过程结束时进行的,包括评估和评价过程。教育中的评估和评价过程为学生和课程的有效性提供反馈。这也将导致这一进程的有效重组。在从基于产品或结果的学生评估方法过渡到基于过程的替代评估方法期间面临的问题之一是难以评估由多个替代评估工具收集的学生数据。利用学生的所有数据来确定学生的学业成绩对过程评价方法的成功有积极的影响。教育数据挖掘是一种计算机辅助搜索关系和规则,使我们能够通过使用从各种来源获得的有关教育过程的大量数据来预测现在和未来。通过这个过程,可以使用任何模式识别方法来确定和解释大型数据仓库中的模式、相似性和相关性。通过对以过程评价为导向的评价工具,如档案袋、标题、自我与同伴评价、绩效评价等所获得的数据进行整体评价,可以得到学生的学习成绩,以及学生、教师、学校和课程之间的关系。关键词:评估,替代评估,数据挖掘,教育数据挖掘
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