Research on Coreference Resolution Based on Conditional Random Fields

Yujie Miao, Xueqiang Lv, Le Zhang
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Abstract

In view of the phenomenon of noun coreference in Chinese, This paper proposes a deep learning mechanism based on Conditional Random Field (CRF) to study coreference resolution based on deep semantic information representation. The text is input into the vector of Biditive Encoder Representations from Transformers model. The self-attention mechanism is used to mine the hidden features at the context semantic level. Through the reasoning ability of CRF, the complex features are used for reasoning training, and the training results are scored and classified by softmax to complete the anaphora resolution task. The experimental results show that the performance of coreference resolution can be effectively improved by making full use of text feature representation.
基于条件随机场的共参考分辨率研究
针对汉语名词共指现象,提出了一种基于条件随机场(Conditional Random Field, CRF)的深度学习机制,研究基于深度语义信息表示的共指解析。将文本输入到变压器模型的双差编码器表示向量中。利用自注意机制挖掘上下文语义层的隐藏特征。通过CRF的推理能力,利用复杂特征进行推理训练,并通过softmax对训练结果进行评分和分类,完成回指消解任务。实验结果表明,充分利用文本特征表示可以有效地提高共参考分辨率的性能。
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