Chinese named entity recognition method for the field of network security based on RoBERTa

Xiaoyan Zhu, Y. Zhang, Lei Zhu, Xinhong Hei, Yichuan Wang, Feixiong Hu, Yanni Yao
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引用次数: 1

Abstract

As the mobile Internet is developing rapidly, people who use cell phones to access the Internet dominate, and the mobile Internet has changed the development environment of online public opinion and made online public opinion events spread more widely. In the online environment, any kind of public issues may become a trigger for the generation of public opinion and thus need to be controlled for network supervision. The method in this paper can identify entities from the event texts obtained from mobile Today's Headlines, People's Daily, etc., and informatize security of public opinion in event instances, thus strengthening network supervision and control in mobile, and providing sufficient support for national security event management. In this paper, we present a SW-BiLSTM-CRF model, as well as a model combining the RoBERTa pre-trained model with the classical neural network BiLSTM model. Our experiments show that this approach provided achieves quite good results on Chinese emergency corpus, with accuracy and F1 values of 87.21% and 78.78%, respectively.
基于RoBERTa的网络安全领域中文命名实体识别方法
随着移动互联网的快速发展,使用手机上网的人群占主导地位,移动互联网改变了网络舆情的发展环境,使得网络舆情事件传播更加广泛。在网络环境中,任何一种公共问题都可能成为舆论产生的导火索,因此需要网络监管加以控制。本文方法可以从手机《今日头条》、《人民日报》等获取的事件文本中识别实体,对事件实例中的舆情安全进行信息化处理,从而加强移动网络的监管和控制,为国家安全事件管理提供充足的支持。在本文中,我们提出了SW-BiLSTM-CRF模型,以及RoBERTa预训练模型与经典神经网络BiLSTM模型相结合的模型。实验表明,该方法在中文应急语料库上取得了较好的效果,准确率和F1值分别为87.21%和78.78%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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