Discrete sequence rearrangement based self-supervised chinese named entity recognition for robot instruction parsing

Cong Jiang, Qingyang Xu, Yong Song, Xianfeng Yuan, Bao Pang, Yibin Li
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Abstract

Named entity recognition (NER) plays an important role in information extraction tasks, but most models rely on large-scale labeled data. Getting the model to move away from large-scale labeled datasets is challenging. In this paper, a SCNER (Self-Supervised NER) model is proposed. The BiLSTM (Bidirectional LSTM) is adopted as the named entity extractor, and an Instruction Generation Subsystem (IGS) is proposed to generate "Retelling Instructions", which analyzes the similarities between the input instructions and "Retelling Instructions" as the losses for model training. A series of rules based on traditional learning rules have been proposed for discrete forward computation and error backpropagation. It mimics language learning in human infants and constructs a SCNER model. This model is used for robot instruction understanding and can be trained on unlabeled datasets to extract named entities from instructions. Experimental results show that the proposed model is competitive with the supervised BiLSTM-CRF and BERT-NER models. In addition, the model is applied to a real robot, which verifies the practicality of SCNER.
基于离散序列重排的自监督中文命名实体识别用于机器人指令解析
命名实体识别(NER)在信息提取任务中发挥着重要作用,但大多数模型依赖于大规模的标记数据。让模型远离大规模标记数据集是一项挑战。提出了一种自监督NER (Self-Supervised NER)模型。采用BiLSTM (Bidirectional LSTM)作为命名实体提取器,提出指令生成子系统(IGS)生成“复述指令”,分析输入指令与“复述指令”的相似度,作为模型训练的损失。在传统学习规则的基础上,提出了一系列用于离散前向计算和误差反向传播的规则。它模仿人类婴儿的语言学习,并构建了一个SCNER模型。该模型用于机器人指令理解,可以在未标记的数据集上进行训练,从指令中提取命名实体。实验结果表明,该模型与有监督的BiLSTM-CRF和BERT-NER模型具有较强的竞争力。此外,将该模型应用于实际机器人,验证了SCNER的实用性。
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