Active discovering new slots for task-oriented conversation
Existing task-oriented conversational systems heavily rely on domain ontologies with pre-defined slots and candidate values. In practical settings, these prerequisites are hard to meet, due to the emerging new user requirements and ever-changing scenarios. To mitigate these issues for better interac...
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sg-smu-ink.sis_research-97032024-03-28T08:32:41Z Active discovering new slots for task-oriented conversation WU, Yuxia DAI, Tianhao ZHENG, Zhedong LIAO, Lizi Existing task-oriented conversational systems heavily rely on domain ontologies with pre-defined slots and candidate values. In practical settings, these prerequisites are hard to meet, due to the emerging new user requirements and ever-changing scenarios. To mitigate these issues for better interaction performance, there are efforts working towards detecting out-of-vocabulary values or discovering new slots under unsupervised or semi-supervised learning paradigms. However, overemphasizing on the conversation data patterns alone induces these methods to yield noisy and arbitrary slot results. To facilitate the pragmatic utility, real-world systems tend to provide a stringent amount of human labeling quota, which offers an authoritative way to obtain accurate and meaningful slot assignments. Nonetheless, it also brings forward the high requirement of utilizing such quota efficiently. Hence, we formulate a general new slot discovery task in an information extraction fashion and incorporate it into an active learning framework to realize human-in-the-loop learning. Specifically, we leverage existing language tools to extract value candidates where the corresponding labels are further leveraged as weak supervision signals. Based on these, we propose a bi-criteria selection scheme which incorporates two major strategies, namely, uncertainty-based and diversity-based sampling to efficiently identify terms of interest. We conduct extensive experiments on several public datasets and compare with a bunch of competitive baselines to demonstrate the effectiveness of our method. 2024-01-01T08:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/8700 info:doi/10.1109/TASLP.2024.3374060 https://ink.library.smu.edu.sg/context/sis_research/article/9703/viewcontent/ActivelyDiscoveringNewSlots_av.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University active learning Information retrieval Labeling language processing New slot discovery Noise measurement Ontologies Redundancy Task analysis task-oriented conversation Uncertainty Artificial Intelligence and Robotics Theory and Algorithms |
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active learning Information retrieval Labeling language processing New slot discovery Noise measurement Ontologies Redundancy Task analysis task-oriented conversation Uncertainty Artificial Intelligence and Robotics Theory and Algorithms WU, Yuxia DAI, Tianhao ZHENG, Zhedong LIAO, Lizi Active discovering new slots for task-oriented conversation |
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Existing task-oriented conversational systems heavily rely on domain ontologies with pre-defined slots and candidate values. In practical settings, these prerequisites are hard to meet, due to the emerging new user requirements and ever-changing scenarios. To mitigate these issues for better interaction performance, there are efforts working towards detecting out-of-vocabulary values or discovering new slots under unsupervised or semi-supervised learning paradigms. However, overemphasizing on the conversation data patterns alone induces these methods to yield noisy and arbitrary slot results. To facilitate the pragmatic utility, real-world systems tend to provide a stringent amount of human labeling quota, which offers an authoritative way to obtain accurate and meaningful slot assignments. Nonetheless, it also brings forward the high requirement of utilizing such quota efficiently. Hence, we formulate a general new slot discovery task in an information extraction fashion and incorporate it into an active learning framework to realize human-in-the-loop learning. Specifically, we leverage existing language tools to extract value candidates where the corresponding labels are further leveraged as weak supervision signals. Based on these, we propose a bi-criteria selection scheme which incorporates two major strategies, namely, uncertainty-based and diversity-based sampling to efficiently identify terms of interest. We conduct extensive experiments on several public datasets and compare with a bunch of competitive baselines to demonstrate the effectiveness of our method. |
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WU, Yuxia DAI, Tianhao ZHENG, Zhedong LIAO, Lizi |
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WU, Yuxia DAI, Tianhao ZHENG, Zhedong LIAO, Lizi |
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WU, Yuxia |
title |
Active discovering new slots for task-oriented conversation |
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Active discovering new slots for task-oriented conversation |
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Active discovering new slots for task-oriented conversation |
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Active discovering new slots for task-oriented conversation |
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Active discovering new slots for task-oriented conversation |
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active discovering new slots for task-oriented conversation |
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Institutional Knowledge at Singapore Management University |
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2024 |
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https://ink.library.smu.edu.sg/sis_research/8700 https://ink.library.smu.edu.sg/context/sis_research/article/9703/viewcontent/ActivelyDiscoveringNewSlots_av.pdf |
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