Research Article
Ontology-based speech act identification in a bilingual dialog system using partial pattern trees
Article first published online: 4 FEB 2008
DOI: 10.1002/asi.20700
© 2008 ASIS&T
Issue

Journal of the American Society for Information Science and Technology
Volume 59, Issue 5, pages 684–694, March 2008
Additional Information
How to Cite
Yeh, J.-F., Wu, C.-H. and Chen, M.-J. (2008), Ontology-based speech act identification in a bilingual dialog system using partial pattern trees. J. Am. Soc. Inf. Sci., 59: 684–694. doi: 10.1002/asi.20700
Publication History
- Issue published online: 22 FEB 2008
- Article first published online: 4 FEB 2008
- Manuscript Revised: 8 MAR 2007
- Manuscript Accepted: 8 MAR 2007
- Manuscript Received: 31 JUL 2006
- Abstract
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Abstract
This article presents a bilingual ontology-based dialog system with multiple services. An ontology-alignment algorithm is proposed to integrate ontologies of different languages for cross-language applications. A domain-specific ontology is further extracted from the bilingual ontology using an island-driven algorithm and a domain corpus. This study extracts the semantic words/concepts using latent semantic analysis (LSA). Based on the extracted semantic words and the domain ontology, a partial pattern tree is constructed to model the speech act of a spoken utterance. The partial pattern tree is used to deal with the ill-formed sentence problem in a spoken-dialog system. Concept expansion based on domain ontology is also adopted to improve system performance. For performance evaluation, a medical dialog system with multiple services, including registration information, clinic information, and FAQ information, is implemented. Four performance measures were used separately for evaluation. The speech act identification rate was 86.2%. A task success rate of 77% was obtained. The contextual appropriateness of the system response was 78.5%. Finally, the rate for correct FAQ retrieval was 82%, an improvement of 15% over the keyword-based vector-space model. The results show the proposed ontology-based speech-act identification is effective for dialog management.

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