论文标题

基于认知,社交和情感特征的机器学习的学生学习进步和缺点的动态诊断

Dynamic Diagnosis of the Progress and Shortcomings of Student Learning using Machine Learning based on Cognitive, Social, and Emotional Features

论文作者

Doboli, Alex, Doboli, Simona, Duke, Ryan, Hong, Sangjin, Tang, Wendy

论文摘要

学生多样性,例如学术背景,学习风格,职业和生活目标,种族,年龄,社交和情感特征,课程负载和工作时间表,为教育提供独特的机会,例如学习新技能,同伴指导和示例设置。但是,学生的多样性也可能具有挑战性,因为它增加了学生学习和进步的方式的可变性。单一的教学方法可能是无效的,并且导致学生无法发挥自己的潜力。自动支持可以通过不断评估学生学习和实施所需干预措施来解决传统教学的局限性。本文讨论了一种基于数据分析和机器学习的新方法,以衡量和因果关系诊断学生学习的进步和缺点,然后利用对个人获得的见解来优化学习。诊断与动态诊断形成性评估有关,该评估旨在揭示学习缺点的原因。方法组将困难分为四类:从记忆,概念调整,概念修改和问题分解为子目标(子问题)和概念组合中。数据模型正在预测四种挑战类型中每一种以及学生的学习轨迹的发生。这些模型可用于自动创建实时,特定于学生的干预措施(例如,学习提示),以解决知识较少的概念。我们设想该系统将通过自定义课程材料对每个学生的背景,能力,情况和进步来释放学生学习潜力的新型自适应教学方法;并利用与多样性相关的学习经验。

Student diversity, like academic background, learning styles, career and life goals, ethnicity, age, social and emotional characteristics, course load and work schedule, offers unique opportunities in education, like learning new skills, peer mentoring and example setting. But student diversity can be challenging too as it adds variability in the way in which students learn and progress over time. A single teaching approach is likely to be ineffective and result in students not meeting their potential. Automated support could address limitations of traditional teaching by continuously assessing student learning and implementing needed interventions. This paper discusses a novel methodology based on data analytics and Machine Learning to measure and causally diagnose the progress and shortcomings of student learning, and then utilizes the insight gained on individuals to optimize learning. Diagnosis pertains to dynamic diagnostic formative assessment, which aims to uncover the causes of learning shortcomings. The methodology groups learning difficulties into four categories: recall from memory, concept adjustment, concept modification, and problem decomposition into sub-goals (sub-problems) and concept combination. Data models are predicting the occurrence of each of the four challenge types, as well as a student's learning trajectory. The models can be used to automatically create real-time, student-specific interventions (e.g., learning cues) to address less understood concepts. We envision that the system will enable new adaptive pedagogical approaches to unleash student learning potential through customization of the course material to the background, abilities, situation, and progress of each student; and leveraging diversity-related learning experiences.

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