Automated Analysis of Exam Questions According to Bloom's Taxonomy
Author(s) -
Nazlia Omar,
S Haris,
Rosilah Hassan,
Haslina Arshad,
Masura Rahmat,
Noor Faridatul Ainun Zainal,
Rozli Zulkifli
Publication year - 2012
Publication title -
procedia - social and behavioral sciences
Language(s) - English
Resource type - Journals
ISSN - 1877-0428
DOI - 10.1016/j.sbspro.2012.09.278
Subject(s) - taxonomy (biology) , computer science , cognition , bloom's taxonomy , set (abstract data type) , identification (biology) , natural language processing , domain (mathematical analysis) , artificial intelligence , psychology , programming language , biology , mathematical analysis , botany , mathematics , neuroscience
Bloom's Taxonomy is a classification of learning objectives within education that educators set for students. The cognitive domain within this taxonomy is designed to verify a student's cognitive level during a written examination. Educators may sometimes face the challenge in analysing whether their examination questions comply within the requirements of the Bloom's taxonomy at different cognitive levels. This paper proposes an automated analysis of the exam questions to determine the appropriate category based on this taxonomy. This rule-based approach applies Natural Language Processing (NLP) techniques to identify important keywords and verbs, which may assist in the identification of the category of a question. This work focuses on the computer programming subject domain. At present, a set of 100 questions (70 training set and 30 test set) is used in the research. Preliminary results indicate that the rules may successfully assist in the identification of the Bloom's taxonomy category correctly in the exam questions
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