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ConvLab-3: A Flexible Dialogue System Toolkit Based on a Unified Data Format

30 November 2022
Qi Zhu
Christian Geishauser
Hsien-Chin Lin
Carel van Niekerk
Baolin Peng
Zheng-Wei Zhang
Michael Heck
Nurul Lubis
Dazhen Wan
Xiaochen Zhu
Jianfeng Gao
Milica Gavsić
Minlie Huang
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Abstract

Task-oriented dialogue (TOD) systems function as digital assistants, guiding users through various tasks such as booking flights or finding restaurants. Existing toolkits for building TOD systems often fall short of in delivering comprehensive arrays of data, models, and experimental environments with a user-friendly experience. We introduce ConvLab-3: a multifaceted dialogue system toolkit crafted to bridge this gap. Our unified data format simplifies the integration of diverse datasets and models, significantly reducing complexity and cost for studying generalization and transfer. Enhanced with robust reinforcement learning (RL) tools, featuring a streamlined training process, in-depth evaluation tools, and a selection of user simulators, ConvLab-3 supports the rapid development and evaluation of robust dialogue policies. Through an extensive study, we demonstrate the efficacy of transfer learning and RL and showcase that ConvLab-3 is not only a powerful tool for seasoned researchers but also an accessible platform for newcomers.

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