学生概念理解定性分析的智能课堂系统

Jannat Talwar, Shree Ranjani, Anwaya Aras, Dr Mangesh Bedekar
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引用次数: 3

摘要

随着互联网上无处不在的数据的增加,将传统学习技术与现代电子学习工具相结合的智能课堂系统在今天变得非常流行和必要。尽管在电子学习领域已经做了大量的工作,特别是在客观问答评估的自动化、个性化学习、自适应评估系统方面,但在很大程度上,学生主观段落答案的定性分析领域仍未得到探索。传统的黑板、粉笔、谈话式的课堂场景是,教师根据所教授的概念设置试卷,检查学生手工写的答案,从而评估学生的表现。然而,出题仍然是一个耗时的过程,老师不得不为问题的质量、难度和冗余程度而烦恼。此外,手动批改学生答案的过程是一项繁琐而乏味的任务。在本文中,我们提出了设计、分析和实现细节以及一些初步结果,以构建一个系统,该系统集成了上述所有任务,教师参与最少,不仅实现了传统课堂场景的自动化,而且克服了其固有的缺点和谬误。
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Intelligent Classroom System for Qualitative Analysis of Students' Conceptual Understanding
With the increase of ubiquitous data all over the internet, intelligent classroom systems that integrate traditional learning techniques with modern e-learning tools have become quite popular and necessary today. Although a substantial amount of work has been done in the field of e-learning, specifically in automation of objective question and answer evaluation, personalized learning, adaptive evaluation systems, the field of qualitative analysis of a student's subjective paragraph answers remains unexplored to a large extent. The traditional board, chalk, talk based classroom scenario involves a teacher setting question papers based on the concepts taught, checks the answers written by students manually and thus evaluates the students' performance. However, setting question papers remains a time consuming process with the teacher having to bother about question quality, level of difficulty and redundancy. In addition the process of manually correcting students' answers is a cumbersome and tedious task. In this paper, we put forth the design, analysis and implementation details along with some preliminary results to build a system that integrates all the above mentioned tasks with minimal teacher involvement that not only automates the traditional classroom scenario but also overcomes its inherent shortcomings and fallacies.
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