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Automated doubt identification from informal reflections through hybrid sentic patterns and machine learning approach

机译:通过混合疾病模式和机器学习方法从非正式反射中识别自动疑问

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Do my students understand? The question that lingers in every instructor’s mind after each lesson. With the focus on learner-centered pedagogy, is it feasible to provide timely and relevant guidance to individual learners according to their levels of understanding? One of the options available is to collect reflections from learners after each lesson to extract relevant feedback so that doubts or questions can be addressed in a timely manner. In this paper, we derived a hybrid approach that leverages a novel Doubt Sentic Pattern Detection (SPD) algorithm and a machine learning model to automate the identification of doubts from students’ informal reflections. The encouraging results clearly show that the hybrid approach has the potential to be adopted in the real-world doubt detection. Using reflections as a feedback mechanism and automated doubt detection can pave the way to a promising approach for learner-centered teaching and personalized learning.
机译:我的学生明白吗?在每节课之后每个教练的思想中徘徊的问题。通过重点关注以学习者为中心的教育学,可以根据他们的理解水平为各个学习者提供及时和相关的指导是可行的吗?可用的选项之一是在每节课后收集学习者的反思,以提取相关反馈,以便及时解决疑问或问题。在本文中,我们派生了一种混合方法,利用了一种新颖的疑问的典礼模式检测(SPD)算法和机器学习模型,以自动识别学生的非正式反射的疑虑。令人鼓舞的结果清楚地表明,混合方法有可能在真实世界的怀疑检测中采用。使用反思作为反馈机制和自动疑问检测可以为学习者的教学和个性化学习提供有希望的方法。

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