Fusion Deep Learning and Machine Learning for Heterogeneous Military Entity Recognition

Hui Li, Lin Yu, J. Zhang, Ming Lyu
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引用次数: 4

Abstract

With respect to the fuzzy boundaries of military heterogeneous entities, this paper improves the entity annotation mechanism for entity with fuzzy boundaries based on related research works. This paper applies a BERT-BiLSTM-CRF model fusing deep learning and machine learning to recognize military entities, and thus, we can construct a smart military knowledge base with these entities. Furthermore, we can explore many military AI applications with the knowledge base and military Internet of Things (MIoT). To verify the performance of the model, we design multiple types of experiments. Experimental results show that the recognition performance of the model keeps improving with the increasing size of the corpus in the multidata source scenario, with the F -score increasing from 73.56% to 84.53%. Experimental results of cross-corpus cross-validation show that the more types of entities covered in the training corpus and the richer the representation type, the stronger the generalization ability of the trained model, in which the recall rate of the model trained with the novel random type corpus reaches 74.33% and the F -score reaches 76.98%. The results of the multimodel comparison experiments show that the BERT-BiLSTM-CRF model applied in this paper performs well for the recognition of military entities. The longitudinal comparison experimental results show that the F -score of the BERT-BiLSTM-CRF model is 18.72%, 11.24%, 9.24%, and 5.07% higher than the four models CRF, LSTM-CRF, BiLSTM-CR, and BERT-CRF, respectively. The cross-sectional comparison experimental results show that the F -score of the BERT-BiLSTM-CRF model improved by 6.63%, 7.95%, 3.72%, and 1.81% compared to the Lattice-LSTM-CRF, CNN-BiLSTM-CRF, BERT-BiGRU-CRF, and BERT-IDCNN-CRF models, respectively.
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融合深度学习和机器学习在异构军事实体识别中的应用
针对军事异构实体的模糊边界问题,在借鉴相关研究成果的基础上,改进了模糊边界实体的实体标注机制。本文采用BERT-BiLSTM-CRF模型,融合深度学习和机器学习对军事实体进行识别,从而利用这些实体构建智能军事知识库。此外,我们可以利用知识库和军事物联网(MIoT)探索许多军事人工智能应用。为了验证模型的性能,我们设计了多种类型的实验。实验结果表明,在多数据源场景下,随着语料库规模的增加,模型的识别性能不断提高,F分数从73.56%提高到84.53%。跨语料库交叉验证的实验结果表明,训练语料库中涵盖的实体类型越多,表示类型越丰富,训练模型的泛化能力越强,其中使用新型随机类型语料库训练的模型召回率达到74.33%,F -score达到76.98%。多模型对比实验结果表明,本文所采用的BERT-BiLSTM-CRF模型对军事实体的识别效果良好。纵向对比实验结果表明,BERT-BiLSTM-CRF模型的F -得分分别比CRF、LSTM-CRF、BiLSTM-CR和BERT-CRF四种模型高18.72%、11.24%、9.24%和5.07%。横断面对比实验结果表明,BERT-BiLSTM-CRF模型的F -得分分别比Lattice-LSTM-CRF、CNN-BiLSTM-CRF、BERT-BiGRU-CRF和BERT-IDCNN-CRF模型提高了6.63%、7.95%、3.72%和1.81%。
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