M. Denecke, and N. Yasuda. Recent Trends in Discourse and Dialogue, volume 39 of Text, Speech and Language Technology, chapter 9, Springer, Dordrecht, (2008)
DOI: 10.1007/978-1-4020-6821-8_9
Abstract
Interactive Restricted Domain Question Answering Systems combine the interactivity of dialogue systems with the information retrieval features of question answering systems. The main problem when going from task-oriented dialogue systems to interactive restricted domain question answering systems is that the lack of task structure prohibits making simplifying assumptions as in taskoriented dialogue systems. In order to address this issue, we propose a solution that combines representations based on keywords extracted from the user utterances with machine learning to learn the dialogue management function. More specifically, we propose to use Support Vector Machines to classify the dialogue state containing the extracted keywords in order to determine the next action to be taken by the dialogue manager. Much of the content selection for clarification question usually found in dialogue managers is moved to an instance-based generation component. The proposed method has the advantage that it does not rely on an explicit representation of task structure as is necessary for task-oriented dialogue systems.
%0 Book Section
%1 DeneckeYasuda08c9
%A Denecke, Matthias
%A Yasuda, Norihito
%B Recent Trends in Discourse and Dialogue
%C Dordrecht
%D 2008
%E Dybkjær, Laila
%E Minker, Wolfgang
%I Springer
%K 01614 springer paper ai language processing dialog information retrieval answer zzz.iui
%P 219--246
%R 10.1007/978-1-4020-6821-8_9
%T Does This Answer Your Question?
%V 39
%X Interactive Restricted Domain Question Answering Systems combine the interactivity of dialogue systems with the information retrieval features of question answering systems. The main problem when going from task-oriented dialogue systems to interactive restricted domain question answering systems is that the lack of task structure prohibits making simplifying assumptions as in taskoriented dialogue systems. In order to address this issue, we propose a solution that combines representations based on keywords extracted from the user utterances with machine learning to learn the dialogue management function. More specifically, we propose to use Support Vector Machines to classify the dialogue state containing the extracted keywords in order to determine the next action to be taken by the dialogue manager. Much of the content selection for clarification question usually found in dialogue managers is moved to an instance-based generation component. The proposed method has the advantage that it does not rely on an explicit representation of task structure as is necessary for task-oriented dialogue systems.
%& 9
@incollection{DeneckeYasuda08c9,
abstract = {Interactive Restricted Domain Question Answering Systems combine the interactivity of dialogue systems with the information retrieval features of question answering systems. The main problem when going from task-oriented dialogue systems to interactive restricted domain question answering systems is that the lack of task structure prohibits making simplifying assumptions as in taskoriented dialogue systems. In order to address this issue, we propose a solution that combines representations based on keywords extracted from the user utterances with machine learning to learn the dialogue management function. More specifically, we propose to use Support Vector Machines to classify the dialogue state containing the extracted keywords in order to determine the next action to be taken by the dialogue manager. Much of the content selection for clarification question usually found in dialogue managers is moved to an instance-based generation component. The proposed method has the advantage that it does not rely on an explicit representation of task structure as is necessary for task-oriented dialogue systems.},
added-at = {2016-11-06T15:46:05.000+0100},
address = {Dordrecht},
author = {Denecke, Matthias and Yasuda, Norihito},
biburl = {https://www.bibsonomy.org/bibtex/2a00389cd71753bf3404ac61340d60475/flint63},
booktitle = {Recent Trends in Discourse and Dialogue},
chapter = 9,
crossref = {DybkjaerMinker2008},
doi = {10.1007/978-1-4020-6821-8_9},
editor = {Dybkj{\ae}r, Laila and Minker, Wolfgang},
file = {SpringerLink:2008/DeneckeYasuda08c9.pdf:PDF},
groups = {public},
interhash = {a89d6098b2302d9b1f61ef1ca58ac0ee},
intrahash = {a00389cd71753bf3404ac61340d60475},
keywords = {01614 springer paper ai language processing dialog information retrieval answer zzz.iui},
pages = {219--246},
publisher = {Springer},
series = {Text, Speech and Language Technology},
timestamp = {2018-04-16T12:25:37.000+0200},
title = {Does This Answer Your Question?},
username = {flint63},
volume = 39,
year = 2008
}