Ciência_Iscte
Publications
Publication Detailed Description
Artificial intelligence: Methodology, systems, and applications
Year (definitive publication)
2018
Language
English
Country
Switzerland
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Abstract
Dialog act recognition is an important step for dialog systems since it reveals the intention behind the uttered words. Most approaches on the task use word-level tokenization. In contrast, this paper explores the use of character-level tokenization. This is relevant since there is information at the sub-word level that is related to the function of the words and, thus, their intention. We also explore the use of different context windows around each token, which are able to capture important elements, such as affixes. Furthermore, we assess the importance of punctuation and capitalization. We performed experiments on both the Switchboard Dialog Act Corpus and the DIHANA Corpus. In both cases, the experiments not only show that character-level tokenization leads to better performance than the typical word-level approaches, but also that both approaches are able to capture complementary information. Thus, the best results are achieved by combining tokenization at both levels.
Acknowledgements
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Keywords
Dialog act recognition,Character-level,Switchboard dialog act corpus,DIHANA corpus,Multilinguality
Fields of Science and Technology Classification
- Mathematics - Natural Sciences
- Computer and Information Sciences - Natural Sciences
Funding Records
| Funding Reference | Funding Entity |
|---|---|
| UID/CEC/50021/2013 | Fundação para a Ciência e a Tecnologia |
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