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Low-resource named entity recognition via multi-source projection: Not quite there yet?

机译:通过多源投影的低资源命名实体识别:还不存在吗?

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摘要

Projecting linguistic annotations through word alignments is one of the most prevalent approaches to cross-lingual transfer learning. Conventional wisdom suggests that annotation projection "just works" regardless of the task at hand. We carefully consider multi-source projection for named entity recognition. Our experiment with 17 languages shows that to detect named entities in true low-resource languages, annotation projection may not be the right way to move forward. On a more positive note, we also uncover the conditions that do favor named entity projection from multiple sources. We argue these are infeasible under noisy low-resource constraints.
机译:通过单词对齐方式投射语言注释是跨语言迁移学习的最流行方法之一。传统观点认为,注释投影“可以正常工作”,而与手头的任务无关。我们仔细考虑用于命名实体识别的多源投影。我们使用17种语言进行的实验表明,要使用真正的资源匮乏的语言检测命名实体,注释投影可能不是前进的正确方法。从更积极的角度来看,我们还从多个来源揭示了确实支持命名实体投影的条件。我们认为,在嘈杂的低资源约束下,这是不可行的。

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  • 会议地点 Brussels(BE)
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    Department of Computer Science IT University of Copenhagen Rued Langgaards Vej 7, 2300 Copenhagen S, Denmark;

    Department of Computer Science IT University of Copenhagen Rued Langgaards Vej 7, 2300 Copenhagen S, Denmark;

    Department of Computer Science IT University of Copenhagen Rued Langgaards Vej 7, 2300 Copenhagen S, Denmark;

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