Conditional random fields (CRFs) have been shown to be one of the most successful approaches to sequence labeling. Various linear-chain neural CRFs (NCRFs) are developed to implement the non-linear node potentials in CRFs, but still keeping the linear-chain hidden structure. In this paper, we propose NCRF transducers, which consists of two RNNs, one extracting features from observations and the other capturing (theoretically infinite) long-range dependencies between labels. Different sequence labeling methods are evaluated over POS tagging, chunking and NER (English, Dutch). Experiment results show that NCRF transducers achieve consistent improvements over linear-chain NCRFs and RNN transducers across all the four tasks, and can improve state-of-the-art results.
翻译:有条件随机字段(CRF)被证明是最成功的排序标签方法之一。开发了各种线性链神经通用报告格式(NCRF),以在通用报告格式中实现非线性节点潜力,但仍保留线性链隐藏结构。在本文中,我们提议NCRF传感器,由两个RNS组成,一个从观测中提取特征,另一个(理论上无限)在标签之间获取远程依赖性。在POS标签、块块和NER(英语、荷兰语)上评估了不同的序列标签方法。实验结果表明,NCRF传感器在线性链式NCRF和RNNT传感器方面在所有四项任务上都取得了一致的改进,并且能够改进最新的结果。