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Investigating Code-Mixed Modern Standard Arabic-Egyptian to English Machine Translation

机译:调查码混现代标准阿拉伯语 - 埃及人到英语机翻译

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Recent progress in neural machine translation (NMT) has made it possible to translate successfully between monolingual language pairs where large parallel data exist, with pre-trained models improving performance even further. Although there exists work on translating in code-mixed settings (where one of the pairs includes text from two or more languages), it is still unclear what recent success in NMT and language modeling exactly means for translating code-mixed text. We investigate one such context, namely MT from code-mixed Modern Standard Arabic and Egyptian Arabic (MSAEA) into English. We develop models under different conditions, employing both (ⅰ) standard end-to-end sequence-to-sequence (S2S) Transformers trained from scratch and (ⅱ) pre-trained S2S language models (LMs). We are able to acquire reasonable performance using only MSA-EN parallel data with S2S models trained from scratch. We also find LMs fine-tuned on data from various Arabic dialects to help the MSAEA-EN task. Our work is in the context of the Shared Task on Machine Translation in Code-Switching. Our best model achieves 25.72 BLEU, placing us first on the official shared task evaluation for MSAEA-EN.
机译:神经电机翻译(NMT)的最新进展使得可以在存在大型并行数据的单机语言对之间成功转换,具有预先接受的模型,即使进一步提高性能。虽然在代码混合设置中转换有工作(其中一个成对包括来自两种或更多种语言的文本),但仍不清楚NMT和语言建模的最新成功完全是为了翻译代码混合文本。我们调查一个这样的上下文,即从Code-Micric Standmal标准阿拉伯语和埃及阿拉伯语(MSAEA)中的MT。我们在不同的条件下开发模型,采用(Ⅰ)标准端到端序列到序列(S2S)变压器从划痕和(Ⅱ)预先训练的S2S语言模型(LMS)。我们能够仅使用使用从头开始培训的S2S模型的MSA-ZB并行数据来获得合理的性能。我们还在各种阿拉伯语方言的数据上发现LMS精细调整,以帮助MSAEA-ZH任务。我们的工作是在代码切换中的机器翻译的共享任务的上下文中。我们最好的型号达到25.72 BLeu,首先在MSAEA-ZH的官方共享任务评估中首先放置我们。

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