文本规范化的编码器-解码器方法

M. Lusetti, T. Ruzsics, A. Göhring, T. Samardžić, E. Stark
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引用次数: 38

摘要

文本规范化是将非规范语言(典型的语音转录和计算机媒介通信)映射到标准化写作的任务。这是一项上游任务,必须使后续直接使用标准的自然语言处理工具,对于瑞士德语等语言来说是必不可少的,这些语言具有很强的地区差异,没有书面标准。文本规范化已经通过各种方法得到解决,最成功的是字符级统计机器翻译(CSMT)。与此同时,机器翻译也发生了变化,被称为神经编码器-解码器(ED)模型的新方法取得了显著的进步。然而,文本规范化还没有出现。已经尝试了许多神经方法,但CSMT仍然是最先进的。在这项工作中,我们使用ED框架规范化瑞士德语WhatsApp消息。我们利用了这个框架的灵活性,它允许我们以不同的方式从相同的训练数据中学习。特别是,我们修改了普通ED模型的解码阶段,以包括在不同粒度级别(字符和单词)上操作的目标端语言模型。我们的系统比较表明,我们的方法比CSMT的最新技术有了改进。
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Encoder-Decoder Methods for Text Normalization
Text normalization is the task of mapping non-canonical language, typical of speech transcription and computer-mediated communication, to a standardized writing. It is an up-stream task necessary to enable the subsequent direct employment of standard natural language processing tools and indispensable for languages such as Swiss German, with strong regional variation and no written standard. Text normalization has been addressed with a variety of methods, most successfully with character-level statistical machine translation (CSMT). In the meantime, machine translation has changed and the new methods, known as neural encoder-decoder (ED) models, resulted in remarkable improvements. Text normalization, however, has not yet followed. A number of neural methods have been tried, but CSMT remains the state-of-the-art. In this work, we normalize Swiss German WhatsApp messages using the ED framework. We exploit the flexibility of this framework, which allows us to learn from the same training data in different ways. In particular, we modify the decoding stage of a plain ED model to include target-side language models operating at different levels of granularity: characters and words. Our systematic comparison shows that our approach results in an improvement over the CSMT state-of-the-art.
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Encoder-Decoder Methods for Text Normalization Twist Bytes - German Dialect Identification with Data Mining Optimization
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