STAR: A Schema-Guided Dialog Dataset for Transfer Learning
We present STAR, a schema-guided task-oriented dialog dataset consisting of 127,833 utterances and knowledge base queries across 5,820 task-oriented dialogs in 13 domains that is especially designed to facilitate task and domain transfer learning in task-oriented dialog. Furthermore, we propose a sc...
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Zusammenfassung: | We present STAR, a schema-guided task-oriented dialog dataset consisting of
127,833 utterances and knowledge base queries across 5,820 task-oriented
dialogs in 13 domains that is especially designed to facilitate task and domain
transfer learning in task-oriented dialog. Furthermore, we propose a scalable
crowd-sourcing paradigm to collect arbitrarily large datasets of the same
quality as STAR. Moreover, we introduce novel schema-guided dialog models that
use an explicit description of the task(s) to generalize from known to unknown
tasks. We demonstrate the effectiveness of these models, particularly for
zero-shot generalization across tasks and domains. |
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DOI: | 10.48550/arxiv.2010.11853 |