Problem-solving skills among precollege students in clinical immunology and microbiology: classifying strategies with a rubric and artificial neural network technology.

S. Kanowith-Klein, Mel Stave, R. Stevens, A. Casillas
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引用次数: 5

Abstract

Educators emphasize the importance of problem solving that enables students to apply current knowledge and understanding in new ways to previously unencountered situations. Yet few methods are available to visualize and then assess such skills in a rapid and efficient way. Using a software system that can generate a picture (i.e., map) of students' strategies in solving problems, we investigated methods to classify problem-solving strategies of high school students who were studying infectious and noninfectious diseases. Using maps that indicated items students accessed to solve a software simulation as well as the sequence in which items were accessed, we developed a rubric to score the quality of the student performances and also applied artificial neural network technology to cluster student performances into groups of related strategies. Furthermore, we established that a relationship existed between the rubric and neural network results, suggesting that the quality of a problem-solving strategy could be predicted from the cluster of performances in which it was assigned by the network. Using artificial neural networks to assess students' problem-solving strategies has the potential to permit the investigation of the problem-solving performances of hundreds of students at a time and provide teachers with a valuable intervention tool capable of identifying content areas in which students have specific misunderstandings, gaps in learning, or misconceptions.
临床免疫学和微生物学学前学生的问题解决能力:分类策略与人工神经网络技术。
教育工作者强调解决问题的重要性,使学生能够以新的方式将现有的知识和理解应用到以前从未遇到过的情况中。然而,很少有方法可以快速有效地可视化并评估这些技能。我们利用一个能够生成学生解题策略图片(即地图)的软件系统,研究了传染病和非传染病高中生解题策略的分类方法。我们使用指示学生访问项目的地图来解决软件模拟以及访问项目的顺序,开发了一个评分学生表现质量的标准,并应用人工神经网络技术将学生表现聚类到相关策略组中。此外,我们建立了标题和神经网络结果之间的关系,这表明可以从网络分配的性能集群中预测解决问题策略的质量。使用人工神经网络来评估学生的问题解决策略有可能允许一次调查数百名学生的问题解决表现,并为教师提供有价值的干预工具,能够识别学生有特定误解、学习差距或误解的内容领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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