Sciweavers

CICLING
2005
Springer

A Supervised Clustering Method for Text Classification

14 years 5 months ago
A Supervised Clustering Method for Text Classification
This paper describes a supervised three-tier clustering method for classifying students’ essays of qualitative physics in the Why2-Atlas tutoring system. Our main purpose of categorizing text in our tutoring system is to map the students’ essay statements into principles and misconceptions of physics. A simple `bag-of-words’ representation using a naïve-bayes algorithm to categorize text was unsatisfactory for our purposes of analyses as it exhibited many misclassifications because of the relatedness of the concepts themselves and its inability to handle misconceptions. Hence, we investigate the performance of the k-nearest neighborhood algorithm coupled with clusters of physics concepts on classifying students’ essays. We use a three-tier tagging schemata (cluster, sub-cluster and class) for each document and found that this kind of supervised hierarchical clustering leads to a better understanding of the student’s essay.
Umarani Pappuswamy, Dumisizwe Bhembe, Pamela W. Jo
Added 26 Jun 2010
Updated 26 Jun 2010
Type Conference
Year 2005
Where CICLING
Authors Umarani Pappuswamy, Dumisizwe Bhembe, Pamela W. Jordan, Kurt VanLehn
Comments (0)