Context personalization, preferences, and performance in an intelligent tutoring system for middle school mathematics

Stephen E. Fancsali, Steven Ritter
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引用次数: 21

Abstract

Learners often think math is unrelated to their own interests. Instructional software has the potential to provide personalized instruction that responds to individuals' interests. Carnegie Learning's MATHia™ software for middle school mathematics asks learners to specify domains of their interest (e.g., sports & fitness, arts & music), as well as names of friends/classmates, and uses this information to both choose and personalize word problems for individual learners. Our analysis of MATHia's relatively coarse-grained personalization contrasts with more finegrained analysis in previous research on word problems in the Cognitive Tutor (e.g., finding effects on performance in parts of problems that depend on more difficult skills), and we explore associations of aggregate preference "honoring" with learner performance. To do so, we define a notion of "strong" learner interest area preferences and find that honoring such preferences has a small negative association with performance. However, learners that both merely express preferences (either interest area preferences or setting names of friends/classmates), and those that express strong preferences, tend to perform in ways that are associated with better learning compared to learners that do not express such preferences. We consider several explanations of these findings and suggest important topics for future research.
中学数学智能辅导系统中的情境个性化、偏好与表现
学习者常常认为数学与他们自己的兴趣无关。教学软件有可能根据个人的兴趣提供个性化的教学。卡内基学习的MATHia™中学数学软件要求学习者指定他们感兴趣的领域(例如,运动与健身,艺术与音乐),以及朋友/同学的名字,并使用这些信息为单个学习者选择和个性化单词问题。我们对MATHia的相对粗粒度个性化的分析与之前对Cognitive Tutor中单词问题的更细粒度的分析形成对比(例如,发现依赖于更困难技能的部分问题对表现的影响),我们探索了“尊重”与学习者表现的总体偏好之间的联系。为此,我们定义了一个“强烈”学习者兴趣领域偏好的概念,并发现尊重这种偏好与表现有很小的负相关。然而,仅仅表达偏好(兴趣领域偏好或设置朋友/同学的名字)的学习者,以及那些表达强烈偏好的学习者,与没有表达这种偏好的学习者相比,往往表现得更好。我们考虑了对这些发现的几种解释,并提出了未来研究的重要主题。
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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