2019 July 5
A Novel Dialogue Manager Model for Spoken Dialogue Systems Based on User Input Learning
Type:
Conference
Authors:
M.F. Ahmed Shariff; Ruwan D. Nawarathna
Venue:
SLAAI-ICAI '18
Date of publication:
2019 July 5
Abstract:
The complexity of the dialogue manager is a major issue in spoken dialogue systems. In this work, a novel dialogue manager based on user input learning is proposed to overcome this issue. In the proposed model back-end functionality is considered as a set of functions a user can trigger through the dialogue manager. It uses these functions as classes for the classification of user inputs. To maintain the context of the dialogue interactions, a context tree is used. Consequently, the model performs its task as two classification tasks to identify the function a user input may trigger and use the context to maintain the discourse of the dialogue. The model shows promising results and proves that a dialogue manager can be integrated into a spoken dialogue system much more directly with less hassle.
Citation:
Ahmed Shariff, M.F., Nawarathna, R.D. (2019). A Novel Dialogue Manager Model for Spoken Dialogue Systems Based on User Input Learning. In: Hemanth, J., Silva, T., Karunananda, A. (eds) Artificial Intelligence. SLAAI-ICAI 2018. Communications in Computer and Information Science, vol 890. Springer, Singapore. https://doi.org/10.1007/978-981-13-9129-3_14
@InProceedings{shariff19_dialog_manager,
author="Ahmed Shariff, M. F.
and Nawarathna, Ruwan D.",
editor="Hemanth, Jude
and Silva, Thushari
and Karunananda, Asoka",
title="A Novel Dialogue Manager Model for Spoken Dialogue Systems Based on User Input Learning",
booktitle="Artificial Intelligence",
year="2019",
publisher="Springer Singapore",
address="Singapore",
pages="187--199",
abstract="The complexity of the dialogue manager is a major issue in spoken dialogue systems. In this work, a novel dialogue manager based on user input learning is proposed to overcome this issue. In the proposed model back-end functionality is considered as a set of functions a user can trigger through the dialogue manager. It uses these functions as classes for the classification of user inputs. To maintain the context of the dialogue interactions, a context tree is used. Consequently, the model performs its task as two classification tasks to identify the function a user input may trigger and use the context to maintain the discourse of the dialogue. The model shows promising results and proves that a dialogue manager can be integrated into a spoken dialogue system much more directly with less hassle.",
isbn="978-981-13-9129-3"
}