An Open-Ended Question Self-Explanation Classification Methodology for a Virtual Laboratory Learning System

Qi-Zhone Huang, Chih-Chao Hsu, Tzone-I Wang
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Abstract

Scientific experiments are essential for science and technology education. Experiments in laboratory cost materials, require preparations, and sometimes cause hazards. A widely used educational tool with many advantages, e.g. cheap, repeatable, suspendable, and safe, virtual laboratory has gradually become a major experimental tool in most elementary and high schools. In educational science experiments, one major challenge is how to initiate students on scientific inquiry and ensure there are multiple opportunities for their formative self-assessment and revision. The self-explanation strategy has proven effective in deepen students' understanding of the concepts they are trying to learn. Using self-explanation strategy in educational science experiments might be an effective way to help students think about the observed results of science experiments and build correct scientific concepts. On the other hand, researches point out that using open-ended questions is better than traditional multiple-choice questions for self-explanation strategy. But when using open-ended question self-explanation strategy, without proper prior knowledge and guidance, a student may go wrong in the processes of deduction and result in constructing misconceptions that will become obstacles in further knowledge constructions. Therefore, a learning system that uses open-ended question self-explanation strategy should give proper feedback in order to help students build correct concepts when in self-learning mode. To help students operating in virtual science laboratory and constructing correct concepts from observed results this study constructs an online virtual laboratory learning system with open-ended question self-explanation strategy and proper feedback for natural science course of primary schools. The system uses natural language processing (NLP) technology to analyze students' self-explanation strings, compares the results with coded classification rules, established by an expert from reference explanations, to check the correctness of the strings and possible misconceptions in them, and gives proper learning material, as feedback, for the students to revise possible misconceptions. In the final experiment, the system records and checks all self-explanation strings from 53 students and gives them proper feedback, which reaches an average accuracy of 84.45% after the expert verify the results.
面向虚拟实验室学习系统的开放式问题自解释分类方法
科学实验是科学技术教育的必要条件。实验室里的实验需要材料,需要准备,有时还会造成危险。虚拟实验室作为一种被广泛使用的教学工具,具有廉价、可重复、可悬挂、安全等优点,已逐渐成为大多数中小学的主要实验工具。在教育科学实验中,如何激发学生的科学探究,并确保他们有多种机会进行形成性的自我评估和修改,是一个主要的挑战。事实证明,自我解释策略在加深学生对他们正在学习的概念的理解方面是有效的。在教育科学实验中运用自我解释策略可以有效地帮助学生对科学实验的观察结果进行思考,建立正确的科学观念。另一方面,研究指出,在自我解释策略上,开放式问题优于传统的选择题。但是,在使用开放式问题自我解释策略时,如果没有适当的先验知识和指导,学生可能会在推理过程中出现错误,导致构建错误的概念,从而成为进一步知识构建的障碍。因此,使用开放式问题自我解释策略的学习系统应该给予适当的反馈,以帮助学生在自主学习模式下建立正确的概念。为了帮助学生在虚拟科学实验室中操作,从观察结果中构建正确的概念,本研究构建了一个具有开放式问题自我解释策略和适当反馈的小学自然科学课程在线虚拟实验室学习系统。该系统利用自然语言处理(NLP)技术对学生的自我解释字符串进行分析,并与专家根据参考解释建立的编码分类规则进行比较,检查字符串的正确性和其中可能存在的误解,并给出适当的学习材料作为反馈,供学生修改可能存在的误解。在最后的实验中,系统记录并检查了53名学生的所有自解释字符串,并给予适当的反馈,经过专家验证,平均准确率达到84.45%。
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