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An End-to-End Scalable Iterative Sequence Tagging with Multi-Task Learning

机译:具有多任务学习的端到端可扩展迭代序列标记

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Multi-task learning (MTL) models, which pool examples arisen out of several tasks, have achieved remarkable results in language processing. However, multi-task learning is not always effective when compared with the single-task methods in sequence tagging. One possible reason is that existing methods to multi-task sequence tagging often reply on lower layer parameter sharing to connect different tasks. The lack of interactions between different tasks results in limited performance improvement. In this paper, we propose a novel multi-task learning architecture which could iteratively utilize the prediction results of each task explicitly. We train our model for part-of-speech (POS) tagging, chunking and named entity recognition (NER) tasks simultaneously. Experimental results show that without any task-specific features, our model obtains the state-of-the-art performance on both chunking and NER.
机译:多任务学习(MTL)模型(合并了多个任务中的示例)在语言处理中取得了显著成果。但是,在序列标记中与单任务方法相比,多任务学习并不总是有效的。一个可能的原因是,现有的多任务序列标记方法经常会在较低层的参数共享上做出响应,以连接不同的任务。不同任务之间缺乏交互,导致性能提升有限。在本文中,我们提出了一种新颖的多任务学习体系结构,该体系结构可以迭代地显式利用每个任务的预测结果。我们同时针对词性(POS)标记,分块和命名实体识别(NER)任务训练模型。实验结果表明,在没有任何特定于任务的功能的情况下,我们的模型在分块和NER方面都获得了最新的性能。

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