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An automatic classifier for exam questions in Engineering: A process for Bloom's taxonomy

机译:工程中考试问题的自动分类器:Bloom分类法的过程

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Assessment is an essential activity to achieve the objective of the course being taught and to improve the teaching and learning process. There are several educational taxonomies that can be used to assess the efficacy of assessment in engineering learning by aligning the assessment tasks in line with the intended learning outcomes and teaching and learning activities. This research is focused on using a learning taxonomy that fits well for computer science and engineering to categorize and assign weights to exam questions according to the taxonomy levels. Existing Natural Language Processing (NLP) techniques, Wordnet similarity algorithms with NLTK and Wordnet package were used and a new set of rules were developed to identify the category and the weight for each exam question according to Bloom's taxonomy. Using the result the evaluators can analyze and design the question papers to measure the student knowledge from various aspects and levels. Prior evaluation was conducted to identify most suitable NLP preprocessing techniques to the context. A sample set of end semester examination questions of the Department of Computer science and Engineering (CSE), University of Moratuwa was used to evaluate the accuracy of the question classification; weight assignment and the main category assignment were validated against the manual classification by a domain expert. The outcome of classification is a set of weights assigned under each taxonomy category, indicating the likelihood of a question to fall into a certain category. The highest weight category was considered as the main category of the exam question. According to the generated rule set the accuracy of detecting the correct main category of a question is 82%.
机译:评估是实现课程的目标,并提高教学和学习过程的必要活动。有几个教育分类学,可用于通过将评估任务与预期的学习成果和教学和学习活动一致,评估评估在工程学习中的疗效。本研究专注于使用适合计算机科学和工程的学习分类,根据分类水平对考试问题进行分类和分配权重。使用现有的自然语言处理(NLP)技术,使用了具有NLTK和Wordnet包的Wordnet相似性算法,并开发了一组新规则,以确定根据盛开的分类物的每个考试问题的类别和重量。使用结果,评估员可以分析和设计问题文件,以衡量各个方面和水平的学生知识。进行了先前评估以确定对上下文的最合适的NLP预处理技术。 Moratuwa大学计算机科学与工程系(CSE)的终端学期考试问题一组示例,用于评估问题分类的准确性;重量分配和主要类别分配针对域专家的手动分类验证。分类结果是在每个分类类别下分配的一组权重,表明问题落入某个类别的可能性。最高权重类被认为是考试问题的主要类别。根据生成的规则设定检测问题的正确主类的准确性为82%。

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