Class name guided out-of-scope intent classification
The paper introduces Semantics of Class Labelbased Unsupervised Out of Scope Intent Detection (SCOOS), a novel method aimed at enhancing out-of-scope (OOS) intent classification in task-oriented dialogue systems. Unlike prior approaches that rely solely on indomain (ID) data features, SCOOS leverage...
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2024
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sg-smu-ink.sis_research-107522024-12-16T03:20:22Z Class name guided out-of-scope intent classification GAUTAM, Chandan PARAMESWARAN, Sethupathy KANE, Aditya FANG, Yuan RAMASAMY, Savitha SUNDARAM, Suresh SAHU, Sunil Kumar LI, Xiaoli The paper introduces Semantics of Class Labelbased Unsupervised Out of Scope Intent Detection (SCOOS), a novel method aimed at enhancing out-of-scope (OOS) intent classification in task-oriented dialogue systems. Unlike prior approaches that rely solely on indomain (ID) data features, SCOOS leverages semantic cues embedded in class labels to improve classification accuracy. The method entails forming a compact feature space centered around the semantics of class labels by minimizing losses between ID features and class names. SCOOS achieves this by creating a compact feature space centered around class label semantics, achieved through minimizing losses between in-domain (ID) features and class names. This involves training two spherical variational autoencoders concurrently to learn a shared latent space between ID features and class names, aligning ID feature data based on the corresponding classes in the latent space, and training a classifier for (m + 1)-class classification using only ID samples, where the (m+1)th class represents OOS samples. Extensive evaluation of three datasets demonstrates that SCOOS outperforms existing methods not only for OOS intent detection but also for ID intent classification. Additionally, an ablation study is conducted to analyze the impact of different components of SCOOS, and we also presented the visualization of the latent space representation providing insights into the influence of semantic information from class labels. 2024-11-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/9752 info:doi/10.18653/v1/2024.findings-emnlp.531 https://ink.library.smu.edu.sg/context/sis_research/article/10752/viewcontent/EMNLP24Findings_SCOOS.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 Out-of-scope intent classification Dialogue systems Class label semantics Out-of-scope intent detection Artificial Intelligence and Robotics Computer Sciences |
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Out-of-scope intent classification Dialogue systems Class label semantics Out-of-scope intent detection Artificial Intelligence and Robotics Computer Sciences |
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Out-of-scope intent classification Dialogue systems Class label semantics Out-of-scope intent detection Artificial Intelligence and Robotics Computer Sciences GAUTAM, Chandan PARAMESWARAN, Sethupathy KANE, Aditya FANG, Yuan RAMASAMY, Savitha SUNDARAM, Suresh SAHU, Sunil Kumar LI, Xiaoli Class name guided out-of-scope intent classification |
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The paper introduces Semantics of Class Labelbased Unsupervised Out of Scope Intent Detection (SCOOS), a novel method aimed at enhancing out-of-scope (OOS) intent classification in task-oriented dialogue systems. Unlike prior approaches that rely solely on indomain (ID) data features, SCOOS leverages semantic cues embedded in class labels to improve classification accuracy. The method entails forming a compact feature space centered around the semantics of class labels by minimizing losses between ID features and class names. SCOOS achieves this by creating a compact feature space centered around class label semantics, achieved through minimizing losses between in-domain (ID) features and class names. This involves training two spherical variational autoencoders concurrently to learn a shared latent space between ID features and class names, aligning ID feature data based on the corresponding classes in the latent space, and training a classifier for (m + 1)-class classification using only ID samples, where the (m+1)th class represents OOS samples. Extensive evaluation of three datasets demonstrates that SCOOS outperforms existing methods not only for OOS intent detection but also for ID intent classification. Additionally, an ablation study is conducted to analyze the impact of different components of SCOOS, and we also presented the visualization of the latent space representation providing insights into the influence of semantic information from class labels. |
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GAUTAM, Chandan PARAMESWARAN, Sethupathy KANE, Aditya FANG, Yuan RAMASAMY, Savitha SUNDARAM, Suresh SAHU, Sunil Kumar LI, Xiaoli |
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GAUTAM, Chandan PARAMESWARAN, Sethupathy KANE, Aditya FANG, Yuan RAMASAMY, Savitha SUNDARAM, Suresh SAHU, Sunil Kumar LI, Xiaoli |
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GAUTAM, Chandan |
title |
Class name guided out-of-scope intent classification |
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Class name guided out-of-scope intent classification |
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Class name guided out-of-scope intent classification |
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Class name guided out-of-scope intent classification |
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Class name guided out-of-scope intent classification |
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class name guided out-of-scope intent classification |
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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/9752 https://ink.library.smu.edu.sg/context/sis_research/article/10752/viewcontent/EMNLP24Findings_SCOOS.pdf |
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