Call for Papers
About the Journal
Editorial Board
Publication Ethics
Instructions for Authors
Announcements
Current Issue
Back Issues
Search for Articles
Categories
Search for Articles
 

JCSE, vol. 5, no. 4, pp.288-293, 2011

DOI: http://dx.doi.org/10.5626/JCSE.2011.5.4.288

Review of Korean Speech Act Classification: Machine Learning Methods

Harksoo Kim, Choong-Nyoung Seon, Jungyun Seo
Department of Computer and Communications Engineering, Kangwon National University, Chuncheon, Korea/ Department of Computer Science and Engineering, Sogang University, Seoul, Korea/ Department of Computer Science and Engineering/Interdisciplinary Program of Integrated Biotechnology, Sogang University, Seoul, Korea

Abstract: To resolve ambiguities in speech act classification, various machine learning models have been proposed over the past 10 years. In this paper, we review these machine learning models and present the results of experimental comparison of three representative models, namely the decision tree, the support vector machine (SVM), and the maximum entropy model (MEM). In experiments with a goaloriented dialogue corpus in the schedule management domain, we found that the MEM has lighter hardware requirements, whereas the SVM has better performance characteristics.

Keyword: Korean speech act classification; Machine learning method

Full Paper:   217 Downloads, 2705 View

 
 
ⓒ Copyright 2010 KIISE – All Rights Reserved.    
Korean Institute of Information Scientists and Engineers (KIISE)   #401 Meorijae Bldg., 984-1 Bangbae 3-dong, Seo-cho-gu, Seoul 137-849, Korea
Phone: +82-2-588-9240    Fax: +82-2-521-1352    Homepage: http://jcse.kiise.org    Email: office@kiise.org