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A Multi-lingual Multi-task Architecture for Low-resource Sequence Labeling

机译:低资源序列标记的多语言多任务架构

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We propose a multi-lingual multi-task architecture to develop supervised models with a minimal amount of labeled data for sequence labeling. In this new architecture, we combine various transfer models using two layers of parameter sharing. On the first layer, we construct the basis of the architecture to provide universal word representation and feature extraction capability for all models. On the second level, we adopt different parameter sharing strategies for different transfer schemes. This architecture proves to be particularly effective for low-resource settings, when there are less than 200 training sentences for the target task. Using Name Tagging as a target task, our approach achieved 4.3%-50.5% absolute F-score gains compared to the mono-lingual single-task baseline model.
机译:我们提出了一种多语言多任务架构,以开发具有最少数量的序列标记标签数据的监督模型。在这种新架构中,我们使用两层参数共享来组合各种传输模型。在第一层,我们构建了体系结构的基础,以为所有模型提供通用的单词表示和特征提取功能。在第二层,针对不同的传输方案,我们采用了不同的参数共享策略。当目标任务的训练句子少于200个时,这种体系结构对于资源匮乏的环境特别有效。与使用单语言单任务基线模型相比,使用姓名标签作为目标任务,我们的方法获得了4.3%-50.5%的绝对F分数增长。

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