Fast streaming translation using machine learning with transformer

Jiabao Qiu, M. Moh, Teng-Sheng Moh
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引用次数: 1

Abstract

Machine Translation is the usage of machine learning techniques in translation from one language to another. It has recently been applied to streaming translation, also known as automatic subtitling. The most common challenge in this area is the trade-off between correctness and speed. Due to its real-time feature, streaming translation needs high speed as it has strict playtime constraints. This paper proposes an enhanced Transformer model for fast streaming translation. The proposed machine-learning method is described, implemented, and evaluated based on a common German-English bilingual dataset. The evaluation results have shown that the proposed system successfully achieved a good speed in the training phase, and a high speed in the actual translating phrase that is fast enough for real-time applications, while also maintaining robust correctness. We believe the proposed Transformer model is a significant contribution to natural-language processing, and would be useful for other real-time translation applications.
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快速流翻译使用机器学习与变压器
机器翻译是使用机器学习技术将一种语言翻译成另一种语言。它最近被应用于流媒体翻译,也被称为自动字幕。这一领域最常见的挑战是在正确性和速度之间进行权衡。由于其实时性,流媒体翻译需要很高的速度,因为它有严格的播放时间限制。本文提出了一种用于快速流翻译的增强Transformer模型。提出的机器学习方法是基于通用的德语-英语双语数据集进行描述、实现和评估的。评估结果表明,该系统在训练阶段取得了较好的翻译速度,在实际翻译短语中也取得了较高的翻译速度,足以满足实时应用,同时保持了鲁棒性的正确性。我们相信提出的Transformer模型是对自然语言处理的重要贡献,对其他实时翻译应用程序也很有用。
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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