Title of article :
Using SVMs for Classification of Cross-Document Relationships
Author/Authors :
Kumar, Yogan Jaya Universiti Teknikal Malaysia Melaka - Faculty of Information and Communication Technology, Malaysia , Kumar, Yogan Jaya Universiti Teknologi Malaysia - Faculty of Computer Science and Information Systems, Malaysia , Salim, Naomie Universiti Teknologi Malaysia - Faculty of Computer Science and Information Systems, Malaysia , Osman, Ahmed Hamza Universiti Teknologi Malaysia - Faculty of Computer Science and Information Systems, Malaysia , Abuobieda, Albaraa Universiti Teknologi Malaysia - Faculty of Computer Science and Information Systems, Malaysia
Abstract :
Cross-document Structure Theory (CST) has recently been proposed to facilitate tasks related to multidocument analysis. Classifying and identifying the CST relationships between sentences across topically related documents have since been proven as necessary. However, there have not been sufficient studies presented in literature to automatically identify these CST relationships. In this study, a supervised machine learning technique, i.e. Support Vector Machines (SVMs), was applied to identify four types of CST relationships, namely “Identity”, “Overlap”, “Subsumption”, and “Description” on the datasets obtained from CSTBank corpus. The performance of the SVMs classification was measured using Precision, Recall and F-measure. In addition, the results obtained using SVMs were also compared with those from the previous literature using boosting classification algorithm. It was found that SVMs yielded better results in classifying the four CST relationships.
Keywords :
CST relation , multi , document , rhetorical relation , SVMs
Journal title :
Pertanika Journal of Science and Technology ( JST)
Journal title :
Pertanika Journal of Science and Technology ( JST)