计算机深度学习人工智能智能模型在自然语言处理中的应用研究

Miaofang Shen
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引用次数: 0

摘要

文档中实体之间的关系是根据自然语言处理方法提取的。使用深度神经网络识别所需的多标签文本。根据总体规范,对系统进行优化,得到系统的设计与实现。本项目基于 Centeno 平台的高性能硬件,探索了 ALBERT、RNN Search、BERT-CRF、Text ING 等四大 NLP 模式。根据元素关系、树形结构和网络结构,提出了一种通用的 MNet 构建方法。利用提取的关联信息判断各安全需求模板的匹配条件是否成立,进而筛选出最终的安全需求模板集。通过这种方法对提取的安全需求进行建模和实例化。仿真结果表明,该模型可以处理复杂系统中的语义依赖和人机交互问题。通过分析 SCADA 系统操作界面的语义,将其转化为通用 MNet 结构,为实现用户语义分析奠定了基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on the Application of AI Intelligent Model of Computer Deep Learning in Natural Language Processing
The relationships between entities in a document are extracted according to natural language processing methods. Deep neural network is used to recognize the required multi-label text. According to the general specification, the system is optimized, and the design and implementation of the system are obtained. This project explores four major NLP modes such as ALBERT, RNN Search, BERT-CRF, Text ING based on the high-performance hardware of the Centeno platform. According to the element relation, tree structure and network structure, a general MNet construction method is proposed. The extracted correlation information is used to determine whether the matching conditions of each security requirement template are established, and then the final set of security requirement templates is screened. The extracted security requirements are modeled and instantiated in this way. Simulation results show that the model can deal with semantic dependency and human-computer interaction in complex systems. By analyzing the semantics of the operation interface in SCADA system, it is transformed into a general MNet construction, which lays a foundation for realizing the semantic analysis of users.
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