首页> 外文期刊>CBE Life Sciences Education >Probabilities and Predictions: Modeling the Development of Scientific Problem-Solving Skills
【24h】

Probabilities and Predictions: Modeling the Development of Scientific Problem-Solving Skills

机译:概率与预测:科学解决问题技能的发展模型

获取原文
           

摘要

The IMMEX (Interactive Multi-Media Exercises) Web-based problem set platform enables the online delivery of complex, multimedia simulations, the rapid collection of student performance data, and has already been used in several genetic simulations. The next step is the use of these data to understand and improve student learning in a formative manner. This article describes the development of probabilistic models of undergraduate student problem solving in molecular genetics that detailed the spectrum of strategies students used when problem solving, and how the strategic approaches evolved with experience. The actions of 776 university sophomore biology majors from three molecular biology lecture courses were recorded and analyzed. Each of six simulations were first grouped by artificial neural network clustering to provide individual performance measures, and then sequences of these performances were probabilistically modeled by hidden Markov modeling to provide measures of progress. The models showed that students with different initial problem-solving abilities choose different strategies. Initial and final strategies varied across different sections of the same course and were not strongly correlated with other achievement measures. In contrast to previous studies, we observed no significant gender differences. We suggest that instructor interventions based on early student performances with these simulations may assist students to recognize effective and efficient problem-solving strategies and enhance learning.
机译:基于IMMEX(交互式多媒体练习)基于Web的问题集平台使在线交付复杂的多媒体模拟,快速收集学生成绩数据成为可能,并且已经被用于多种遗传模拟中。下一步是使用这些数据以形成性的方式理解和改善学生的学习。本文介绍了分子遗传学本科生问题解决概率模型的发展,该模型详细介绍了学生解决问题时使用的策略范围,以及策略方法如何随着经验而发展。记录并分析了三门分子生物学讲座课程中的776名大学二年级生物学专业的表现。首先通过人工神经网络聚类对六个模拟中的每一个进行分组以提供单独的性能指标,然后通过隐马尔可夫模型对这些性能序列进行概率建模以提供进度指标。模型显示,具有不同初始解决问题能力的学生选择了不同的策略。初始策略和最终策略在同一课程的不同部分之间会有所不同,并且与其他成就指标之间没有显着相关性。与以前的研究相比,我们没有观察到明显的性别差异。我们建议基于这些模拟的早期学生表现的讲师干预措施可以帮助学生认识有效和高效的问题解决策略并增强学习。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号