Effective question modelling and intelligent question bank storage engine: an adaptive graph based approach

Abhijeet Kumar, S. Srivastava, V. Krishan, R. Goudar
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引用次数: 1

Abstract

In the changing present competitive scenario, intelligent development of question model is indispensable for intellectual growth of students. There are several computer-based question paper generators, but they typically use random selection from question banks. This paper deals with the adaptive question bank development and management system (AQBDMS) that aims to generate balanced combinations of questions intelligently as per parameters provided by the question paper designer (QPD). AQBDMS uses a concept map developed on a graph database that uses hierarchical knowledge of a particular domain for fetching questions generated in former part. The concept map ensures that the question modelling process is based on certain criteria like Bloom's taxonomy, difficulty level, marking scheme etc. The evaluation of generated question model will provide a feedback to check student's overall level of understanding. On whole, the proposed system would be of great aid to the organisation in effective question modelling and its assessment.
有效问题建模和智能题库存储引擎:一种基于自适应图的方法
在当今不断变化的竞争环境中,问题模式的智能化开发对于学生的智力成长是必不可少的。有几种基于计算机的试卷生成工具,但它们通常是从题库中随机选择的。本文研究了自适应题库开发与管理系统(AQBDMS),该系统旨在根据试卷设计器(QPD)提供的参数,智能地生成均衡的题库组合。AQBDMS使用在图形数据库上开发的概念图,该概念图使用特定领域的分层知识来获取前一部分生成的问题。概念图确保问题建模过程基于一定的标准,如Bloom的分类法、难度等级、评分方案等。生成的问题模型的评估将提供一个反馈,以检查学生的整体理解水平。总的来说,所提出的系统将对组织有效的问题建模和评估有很大的帮助。
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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