Proceedings Article10.1109/ICCSCE.2014.7072776
A review in feature extraction approach in question classification using Support Vector Machine
Anbuselvan Sangodiah,Rohiza Ahmad,Wan Fatimah Wan Ahmad +2 more
- 01 Nov 2014
- pp 536-541
34
TL;DR: This study proposes an integrated approach in feature extraction involving semantic aspect in classifying questions in accordance to Bloom taxonomy using Support Vector Machine classifier, well known for its high accuracy in text classification.
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Abstract: Text classification which is an integral part of text mining has caught much attention in various industries and fields recently. The ability is in assigning text documents to one or more pre-defined categories based on content similarity. While most of application of text classification focuses on document level, question classification works at much granular level such as sentence and phrase. There have been numerous studies on question classification in accordance to Bloom taxonomy in assessments to measure cognitive level of learners in higher learning institutions. But it has not been effective yet to resolve overlapping issue of Bloom taxonomy verb keywords being assigned to more than one category of Bloom taxonomy. The presence of this poses a problem in respect of classifying a particular question into a right category of Bloom taxonomy. And feature extraction plays an important role in improving the accuracy of classifier such as Support Vector Machine in question classification. Much of the past related research work focus on feature extraction methods such as bag of word (BOW) and syntactic analysis to classify questions and to address the issue, an improvement in feature extraction is needed. In view of this, this study proposes an integrated approach in feature extraction involving semantic aspect in classifying questions in accordance to Bloom taxonomy. Support Vector Machine classifier is used as it is well known for its high accuracy in text classification. With all this in place, an improved accuracy in classifying questions in accordance to Bloom taxonomy can be expected.
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Citations
Question classification based on Bloom's taxonomy cognitive domain using modified TF-IDF and word2vec.
Manal Mohammed,Nazlia Omar +1 more
TL;DR: The finding from this study showed that the proposed method is significant in classifying questions from multiple domains based on Bloom’s taxonomy.
A high-quality feature selection method based on frequent and correlated items for text classification
TL;DR: In this paper , a feature selection technique for text classification is proposed, based on frequent and correlated items, which considers both relevance and feature interactions, using association as a metric to evaluate the relationship between the target and features.
A high-quality feature selection method based on frequent and correlated items for text classification
TL;DR: In this article , a feature selection technique for text classification is proposed, based on frequent and correlated items, which considers both relevance and feature interactions, using association as a metric to evaluate the relationship between the target and features.
34
•Proceedings Article
Toward the Automatic Labeling of Course Questions for Ensuring Their Alignment with Learning Outcomes.
S. Supraja,Kevin Hartman,Sivanagaraja Tatinati,Andy W. H. Khong +3 more
- 01 Jun 2017
TL;DR: An intelligent model is proposed to automatically label opportunities for practice according to the learning outcomes intended by the course designers to address the difficulty in consistently aligning feedback about a learner’s practice performance with the intended learning outcomes of those activities.
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