Spoken Language Classification using Hybrid Classifier Combination

Sheila Garfield , Stefan Wermter , Siobhan Devlin
International Journal of Hybrid Intelligent Systems, Volume 2, Number 1, pages 13--33, doi: 10.3233/HIS-2005-2102 - Jun 2005
Associated documents :  
In this paper we describe an approach for spoken language analysis for helpdesk call routing using a combination of simple recurrent networks and support vector machines. In particular we examine this approach for its potential in a difficult spoken language classification task based on recorded operator assistance telephone utterances. We explore simple recurrent networks and support vector machines using a large, unique telecommunication corpus of spontaneous spoken language. The main contribution of the paper is a combination of techniques in the domain of call routing. First, we find that simple recurrent networks perform better than support vector machines for this task. Second, we claim that the combination of simple recurrent networks and support vector machines provides slightly improved performance compared to the performance of either simple recurrent networks or support vector machines.

 

@Article{GWD05, 
 	 author =  {Garfield, Sheila and Wermter, Stefan and Devlin, Siobhan},  
 	 title = {Spoken Language Classification using Hybrid Classifier Combination}, 
 	 journal = {International Journal of Hybrid Intelligent Systems},
 	 number = {1},
 	 volume = {2},
 	 pages = {13--33},
 	 year = {2005},
 	 month = {Jun},
 	 publisher = {IOS Press},
 	 doi = {10.3233/HIS-2005-2102}, 
 }