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Teaching complex molecular simulation algorithms: Using self-evaluation to tailor web-based exercises at an individual level

机译:教学复杂分子模拟算法:使用自我评估在个人水平上定制基于网络的练习

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It is quite challenging to learn complex mathematical algorithms used in molecular simulations, stressing the importance of using the most advantageous teaching methods. Ideally, individuals should learn at their pace and deal with tasks fitting their levels. Web-based exercises make it possible to tailor every small step of the learning process, but this requires continuous monitoring of the learner. Differentiation based on the scores after the first round of common tasks can be demotivating for all students, as they will experience the initial set of tasks as being either too easy or too hard. We designed two tests, a self-monitoring test and a rapid test (RT) in which the students explained equations relating to the current topic. The first test was aimed to see if the students were able to evaluate their own level of knowledge, whereas the RT was aimed to find a fast way to determine the level of the students. We compared both tests with traditional measures of knowledge and used a relatively new method, which was originally designed for the analysis of molecular simulation data, to interpret the results. Based on this analysis, we concluded that self-evaluation, rather than an RT, is a valuable tool to automatically steer individual students through a tree of web-based exercises to match their skill levels and interests.
机译:学习分子模拟中使用的复杂数学算法是非常具有挑战性的,强调使用最有利的教学方法的重要性。理想情况下,个人应该在他们的步伐中学习并处理适合他们水平的任务。基于Web的练习使得可以根据学习过程中的每一小段时间定制,但这需要持续监测学习者。在第一轮常见任务之后的分数基于分数可以用于所有学生的分数,因为他们将遇到最初的任务,或者太容易或太难了。我们设计了两个测试,自我监控测试和快速测试(RT),其中学生解释了与当前主题有关的方程。第一次测试旨在了解学生是否能够评估自己的知识水平,而RT旨在找到一种快速来确定学生水平的方法。我们将测试与传统的知识措施进行了比较并使用了相对较新的方法,最初是为分析分子模拟数据分析而设计的方法,以解释结果。在此分析的基础上,我们得出结论,自我评估,而不是RT,是一种有价值的工具,可以通过基于网络的练习树自动引导各个学生,以符合他们的技能水平和兴趣。

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