Abstract:
Assessment usually plays an indispensable role in
the education and it is the prime indicator of student learning
achievement. Exam questions are the main form of assessment
used in learning. Setting appropriate exam questions
to achieve the desired outcome of the course is a challenging
work for the examiner. Therefore this research is
mainly focused to categorize the exam questions automatically
into its learning levels using Bloom’s taxonomy. Natural
Language Processing (NLP) techniques such as tokenization,
stop word removal, lemmatization and tagging were
used prior to generating the rule set to be used for this classification.
WordNet similarity algorithms with NLTK and
cosine similarity algorithm were developed to generate a
unique set of rules to identify the question category and the
weight for each exam question according to Bloom’s taxonomy.
These derived rules make it easy to analyze the exam
questions. Evaluators can redesign their exam papers based
on the outcome of this classification process. A sample of
examination questions of the Department of Computing and
Information Systems, Wayamba University, Sri Lanka was
used for the evaluation; weight assignment was done based
on the total value generated from both WordNet algorithm
and the cosine algorithm. Identified question categories
were confirmed by a domain expert. The generated rule set
indicated over 70% accuracy.
Citation:
Jayakodi, K., Bandara, M., Perera, I., & Meedeniya, D. (2016). WordNet and Cosine Similarity based Classifier of Exam Questions using Bloom’s Taxonomy. International Journal of Emerging Technologies in Learning (IJET), 11(04), 142. https://doi.org/10.3991/ijet.v11i04.5654