Effectiveness of Crowd-Sourcing On-Demand Assistance from Teachers in Online Learning Platforms

Thanaporn Patikorn, N. Heffernan
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引用次数: 21

Abstract

It has been shown in multiple studies that expert-created on-demand assistance, such as hint messages, improves student learning in online learning environments. However, there are also evident that certain types of assistance may be detrimental to student learning. In addition, creating and maintaining on-demand assistance are hard and time-consuming. In 2017-2018 academic year, 132,738 distinct problems were assigned inside ASSISTments, but only 38,194 of those problems had on-demand assistance. In order to take on-demand assistance to scale, we needed a system that is able to gather new on-demand assistance and allows us to test and measure its effectiveness. Thus, we designed and deployed TeacherASSIST inside ASSISTments. TeacherASSIST allowed teachers to create on-demand assistance for any problems as they assigned those problems to their students. TeacherASSIST then redistributed on-demand assistance by one teacher to students outside of their classrooms. We found that teachers inside ASSISTments had created 40,292 new instances of assistance for 25,957 different problems in three years. There were 14 teachers who created more than 1,000 instances of on-demand assistance. We also conducted two large-scale randomized controlled experiments to investigate how on-demand assistance created by one teacher affected students outside of their classes. Students who received on-demand assistance for one problem resulted in significant statistical improvement on the next problem performance. The students' improvement in this experiment confirmed our hypothesis that crowd-sourced on-demand assistance was sufficient in quality to improve student learning, allowing us to take on-demand assistance to scale.
在线学习平台中教师众包点播援助的有效性
多项研究表明,专家创建的按需辅助,如提示信息,可以改善学生在在线学习环境中的学习。然而,也有证据表明,某些类型的帮助可能不利于学生的学习。此外,创建和维护随需应变的帮助是困难和耗时的。在2017-2018学年,在ASSISTments内部分配了132,738个不同的问题,但其中只有38,194个问题获得了按需援助。为了扩大按需援助的规模,我们需要一个能够收集新的按需援助并允许我们测试和衡量其有效性的系统。因此,我们在ASSISTments中设计并部署了TeacherASSIST。TeacherASSIST允许教师为任何问题创建按需帮助,因为他们将这些问题分配给学生。然后,TeacherASSIST将一名教师的按需帮助重新分配给课堂外的学生。我们发现ASSISTments内部的教师在三年内为25,957个不同的问题创造了40,292个新的援助实例。有14名教师创建了1000多个按需援助实例。我们还进行了两个大规模的随机对照实验,以调查一位教师创建的按需援助如何影响课堂外的学生。在一个问题上接受了按需帮助的学生在下一个问题上的表现有了显著的统计改善。学生在本实验中的进步证实了我们的假设,即众包的按需援助在质量上足以改善学生的学习,使我们能够将按需援助扩大规模。
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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