论文标题

一项关于深度学习模型序列标签最新进展的调查

A Survey on Recent Advances in Sequence Labeling from Deep Learning Models

论文作者

He, Zhiyong, Wang, Zanbo, Wei, Wei, Feng, Shanshan, Mao, Xianling, Jiang, Sheng

论文摘要

Sequence labeling (SL) is a fundamental research problem encompassing a variety of tasks, e.g., part-of-speech (POS) tagging, named entity recognition (NER), text chunking, etc. Though prevalent and effective in many downstream applications (e.g., information retrieval, question answering, and knowledge graph embedding), conventional sequence labeling approaches heavily rely on hand-crafted or language-specific features.最近,由于其在自动学习实例的复杂特征并有效地产生统计表演的功能方面,深度学习已用于序列标记任务。在本文中,我们旨在对现有的基于深度学习的序列标签模型进行全面审查,该模型由三个相关任务组成,例如词性标记,命名为实体识别和文本块。然后,我们系统地介绍了现有的方法基于科学分类法,以及广泛使用的实验数据集和SL域中普遍的评估指标。此外,我们还对可能影响SL域的性能和未来方向的因素进行了对不同SL模型的深入分析。

Sequence labeling (SL) is a fundamental research problem encompassing a variety of tasks, e.g., part-of-speech (POS) tagging, named entity recognition (NER), text chunking, etc. Though prevalent and effective in many downstream applications (e.g., information retrieval, question answering, and knowledge graph embedding), conventional sequence labeling approaches heavily rely on hand-crafted or language-specific features. Recently, deep learning has been employed for sequence labeling tasks due to its powerful capability in automatically learning complex features of instances and effectively yielding the stat-of-the-art performances. In this paper, we aim to present a comprehensive review of existing deep learning-based sequence labeling models, which consists of three related tasks, e.g., part-of-speech tagging, named entity recognition, and text chunking. Then, we systematically present the existing approaches base on a scientific taxonomy, as well as the widely-used experimental datasets and popularly-adopted evaluation metrics in the SL domain. Furthermore, we also present an in-depth analysis of different SL models on the factors that may affect the performance and future directions in the SL domain.

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