Noisy Parallel Data Alignment

Ruoyu Xie, Antonios Anastasopoulos
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引用次数: 1

Abstract

An ongoing challenge in current natural language processing is how its major advancements tend to disproportionately favor resource-rich languages, leaving a significant number of under-resourced languages behind. Due to the lack of resources required to train and evaluate models, most modern language technologies are either nonexistent or unreliable to process endangered, local, and non-standardized languages. Optical character recognition (OCR) is often used to convert endangered language documents into machine-readable data. However, such OCR output is typically noisy, and most word alignment models are not built to work under such noisy conditions. In this work, we study the existing word-level alignment models under noisy settings and aim to make them more robust to noisy data. Our noise simulation and structural biasing method, tested on multiple language pairs, manages to reduce the alignment error rate on a state-of-the-art neural-based alignment model up to 59.6%.
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噪声并行数据对齐
当前自然语言处理中的一个持续挑战是,它的主要进步往往不成比例地偏向于资源丰富的语言,而留下了大量资源不足的语言。由于缺乏训练和评估模型所需的资源,大多数现代语言技术要么不存在,要么不可靠,无法处理濒危、本地和非标准化的语言。光学字符识别(OCR)通常用于将濒危语言文档转换为机器可读数据。然而,这样的OCR输出通常是有噪声的,并且大多数单词对齐模型不是为了在这样的噪声条件下工作而建立的。在这项工作中,我们研究了在噪声环境下现有的词级对齐模型,旨在使它们对噪声数据更具鲁棒性。我们的噪声模拟和结构偏置方法在多个语言对上进行了测试,成功地将最先进的基于神经的对齐模型的对齐错误率降低了59.6%。
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