Reconhecimento Automático Multilingue de Entidades Mencionadas em Diversos Domínios, para Efeitos de Anonimização de Tradução Automática

M. Menezes, Vera Cabarrão, Helena Moniz, Pedro Mota
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Abstract

The following article describes the research developed at Unbabel, a Portuguese Machine-Translation start-up, that combines Machine Translation (MT) with human post-edition with a focus on customer service content. With the work carried out within a real multilingual AI powered, human-refined, MT industry, we aim to contribute to furthering MT quality and good-practices, by exposing the importance of having continuously in development, robust Named Entity Recognition systems for General Data Protection Regulation (GDPR) compliance. We will report three different experiments, resulting from a shared work with Unbabel´s linguists and Unbabel´s Artificial Intelligence (AI) engineering team, matured over a year. The first experiment focused on developing a methodology for the identification and annotation of domain-specific Named Entities (NEs) for the Food-Industry. The devised methodology allows the construction of gold standards for building domain specific NER systems and can be applied for a myriad of different domains. With the implementation of the designed method, we were able to identify the following domain-specific NEs set: Restaurant Names; Restaurant Chains; Dishes; Beverage, Ingredients. The second and third experiments explored the possibilities of constructing, in a semi-automatically way, multilingual NER gold standards for different domains and language pairs, using aligners that project Named Entities across a parallel corpus. Both experiments made it possible to benchmark four different open-source aligners (SimAlign; Fastalign; AwesomeAlign; Eflomal), allowing to identify the one with better performance and, simultaneously, validate the aforementioned approach. This work should be taken as a statement of multidisciplinary, proving and validating the much-needed articulation between different scientific fields that compose and characterize the area of Natural Language Processing (NLP).
多语言自动识别多个域中提到的实体,用于机器翻译匿名化
以下文章描述了Unbabel(一家葡萄牙机器翻译初创公司)开展的一项研究,该研究将机器翻译(MT)与人工后期编辑相结合,重点关注客户服务内容。通过在一个真正的多语言人工智能驱动、人工精炼的机器翻译行业中开展工作,我们的目标是通过揭示持续开发、强大的命名实体识别系统对通用数据保护条例(GDPR)合规的重要性,为进一步提高机器翻译质量和良好实践做出贡献。我们将报告三个不同的实验,这些实验是由Unbabel的语言学家和Unbabel的人工智能(AI)工程团队共同完成的,已经成熟了一年多。第一个实验的重点是为食品工业开发一种识别和注释特定领域的命名实体(NEs)的方法。所设计的方法允许构建特定领域的NER系统的金标准,并且可以应用于无数不同的领域。通过实现所设计的方法,我们能够识别以下特定于域的网元集:餐厅名称;连锁餐厅;菜;饮料,成分。第二个和第三个实验探索了以半自动方式为不同领域和语言对构建多语言NER金标准的可能性,使用对齐器在并行语料库中投影命名实体。这两个实验都可以对四种不同的开源对齐器(SimAlign;Fastalign;AwesomeAlign;Eflomal),从而确定性能更好的方法,同时验证上述方法。这项工作应该被视为多学科的陈述,证明和验证了组成和表征自然语言处理(NLP)领域的不同科学领域之间急需的衔接。
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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