面向机器人自然语言理解的高效转换器

Antonio Greco, Antonio Roberto, Alessia Saggese, M. Vento
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引用次数: 0

摘要

社交机器人的主要任务是通过口头自然语言与人类互动。这意味着它必须能够理解用户和相关实体的意图。近年来,针对自然语言理解(NLU)任务提出了不同的解决方案。基于变压器的体系结构已经获得了非常精确的结果,但它们需要大量的计算资源才能实时工作。不幸的是,这些资源在机器人上配备的嵌入式系统上不可用。由于这些原因,在本文中,我们在流行的ATIS和SNIPS数据集上实验评估了最有希望用于NLU的变压器,并测量了它们在NVIDIA Jetson Xavier NX嵌入式系统上的推理时间。实验分析表明,Albert模型可以获得与流行的BERT架构相当的性能(在实体识别上仅下降2%),同时获得超过3倍的加速。由于我们的分析得出的见解,我们最终开发了一个真正的餐厅搜索系统,该系统在配备有社交机器人的NVIDIA Jetson Xavier NX上运行该模型,并获得了用户对其有效性和响应性的积极反馈。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient Transformers for on-robot Natural Language Understanding
The main task of a social robot is to interact with humans through spoken natural language. It implies that it must be able to understand the intent of the user and the involved entities. Recently, different solutions have been proposed to deal with the Natural Language Understanding (NLU) task. Extremely accurate results have been obtained by architectures based on transformers, but they require high computational resources to work in real-time. Unfortunately, these resources are not available on embedded systems equipped on board the robot. For these reasons, in this paper we experimentally evaluate the most promising transformers for NLU over the popular ATIS and SNIPS datasets and measured their inference time on the NVIDIA Jetson Xavier NX embedded system. The experimental analysis demonstrates that the Albert model can obtain comparable performance w.r.t. the popular BERT architecture (just a 2% drop on entity recognition), while gaining a speed-up of more than 3x. Thanks to the insights coming out from our analysis, we finally developed a real system for restaurant search running the model over a NVIDIA Jetson Xavier NX equipped on board of a social robot, obtaining a positive user feedback about its effectiveness and responsiveness.
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