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Bring It on! Challenges Encountered While Building a Comprehensive Tutoring System Using ReaderBench

机译:来吧!使用ReaderBench构建全面的辅导系统时遇到的挑战

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Intelligent Tutoring Systems (ITSs) are aimed at promoting acquisition of knowledge and skills by providing relevant and appropriate feedback during students' practice activities. ITSs for literacy instruction commonly assess typed responses using Natural Language Processing (NLP) algorithms. One step in this direction often requires building a scoring mechanism that matches human judgments. This paper describes the challenges encountered while implementing an automated evaluation workflow and adopting solutions for increasing performance of the tutoring system. The algorithm described here comprises multiple stages, including initial pre-processing, a rule-based system for pre-classifying self-explanations, followed by classification using a Support Virtual Machine (SVM) learning algorithm. The SVM model hyper-parameters were optimized using grid search approach with 4,109 different self-explanations scored 0 to 3 (i.e., poor to great). The accuracy achieved for the model was 59% (adjacent accuracy = 97%; Kappa = .43).
机译:智能辅导系统(ITS)旨在通过在学生的练习活动中提供相关和适当的反馈来促进知识和技能的获取。用于识字教学的ITS通常使用自然语言处理(NLP)算法来评估输入的答案。朝这个方向迈出的一步通常需要建立一种与人类判断相符的评分机制。本文介绍了在实现自动评估工作流程并采用解决方案以提高补习系统性能时遇到的挑战。这里描述的算法包括多个阶段,包括初始预处理,用于对自解释进行预分类的基于规则的系统,然后使用支持虚拟机(SVM)学习算法进行分类。使用网格搜索方法优化了SVM模型的超参数,其中4,109种不同的自解释得分为0到3(即从差到高)。该模型获得的精度为59%(相邻精度= 97%; Kappa = 0.43)。

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