C5L7: A Zero-Shot Algorithm for Intent and Slot Detection in Multilingual Task Oriented Languages

Jiun-hao Jhan, Qingxiaoyang Zhu, Nehal Bengre, T. Kanungo
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Abstract

Voice assistants are becoming central to our lives. The convenience of using voice assistants to do simple tasks has created an industry for voice-enabled devices like TVs, thermostats, air conditioners, etc. It has also improved the quality of life of elders by making the world more accessible. Voice assistants engage in task-oriented dialogues using machine-learned language understanding models. However, training deep-learned models take a lot of training data, which is time-consuming and expensive. Furthermore, it is even more problematic if we want the voice assistant to understand hundreds of languages. In this paper, we present a zero-shot deep learning algorithm that uses only the English part of the Massive dataset and achieves a high level of accuracy across 51 languages. The algorithm uses a delexicalized translation model to generate multilingual data for data augmentation. The training data is further weighted to improve the accuracy of the worst-performing languages. We report on our experiments with code-switching, word order, multilingual ensemble methods, and other techniques and their impact on overall accuracy.
面向多语言任务的语言意图和插槽检测的零射击算法
语音助手正在成为我们生活的核心。使用语音助手完成简单任务的便利性为电视、恒温器、空调等语音设备创造了一个行业。它还通过使世界更容易接近,提高了老年人的生活质量。语音助手使用机器学习语言理解模型进行面向任务的对话。然而,训练深度学习模型需要大量的训练数据,这既耗时又昂贵。此外,如果我们想让语音助手理解数百种语言,问题就更大了。在本文中,我们提出了一种零采样深度学习算法,该算法仅使用大规模数据集的英语部分,并在51种语言中实现了高水平的准确性。该算法采用去语义化的翻译模型生成多语种数据,用于数据扩充。训练数据进一步加权,以提高表现最差的语言的准确性。我们报告了代码转换、词序、多语言集成方法和其他技术的实验及其对整体准确性的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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