Research on construction technology of artificial intelligence security knowledge graph

As a major strategic technology, artificial intelligence is developing rapidly while bringing numerous security risks.Currently, security data for artificial intelligence is collected from disparate sources and lacks standardized description, making it difficult to integrate and analyze effectively....

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Main Authors: Xiaochen SHEN, Yinhui GE, Bo CHEN, Ling YU
Format: Article
Language:English
Published: POSTS&TELECOM PRESS Co., LTD 2023-04-01
Series:网络与信息安全学报
Subjects:
Online Access:http://www.cjnis.com.cn/thesisDetails#10.11959/j.issn.2096-109x.2023030
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author Xiaochen SHEN
Yinhui GE
Bo CHEN
Ling YU
author_facet Xiaochen SHEN
Yinhui GE
Bo CHEN
Ling YU
author_sort Xiaochen SHEN
collection DOAJ
description As a major strategic technology, artificial intelligence is developing rapidly while bringing numerous security risks.Currently, security data for artificial intelligence is collected from disparate sources and lacks standardized description, making it difficult to integrate and analyze effectively.To address this issue, a method for constructing an artificial intelligence security knowledge graph was proposed.The knowledge graph was used to integrate the current multi-source heterogeneous data, scientifically represent complex relationships of the data, mine potential value and form a domain knowledge base.In view of the diversity and correlation of concepts in the field of artificial intelligence security, a hierarchical structure of artificial intelligence security ontology was proposed to make the ontology structure more diversified and extensible, provide rule constraints for the process of knowledge graph construction, and form an artificial intelligence security knowledge base.To effectively utilize feature information and reduce noise interference, named entity recognition algorithm based on BiLSTM-CRF and relationship extraction algorithm based on CNN-ATT were adopted for information extraction.The constructed artificial intelligence security dataset was then used to verify the performance of the algorithm.Based on the proposed ontology, the multi-level visualization results of the artificial intelligence security knowledge graph were presented in 3D effect, effectively connecting the multi-source security data information.The experimental results show that the constructed knowledge graph meets the multi-dimensional evaluation criteria of accuracy, consistency, completeness, and timeliness, providing knowledge support for artificial intelligence security research.Overall, the proposed method can help address the complexity and heterogeneity of security data in artificial intelligence and provide a more standardized, integrated approach to knowledge representation and analysis.
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spelling doaj-art-7e425069031c4f7d9d6b6dbe8edd69272025-01-15T03:16:23ZengPOSTS&TELECOM PRESS Co., LTD网络与信息安全学报2096-109X2023-04-01916417459576446Research on construction technology of artificial intelligence security knowledge graphXiaochen SHENYinhui GEBo CHENLing YUAs a major strategic technology, artificial intelligence is developing rapidly while bringing numerous security risks.Currently, security data for artificial intelligence is collected from disparate sources and lacks standardized description, making it difficult to integrate and analyze effectively.To address this issue, a method for constructing an artificial intelligence security knowledge graph was proposed.The knowledge graph was used to integrate the current multi-source heterogeneous data, scientifically represent complex relationships of the data, mine potential value and form a domain knowledge base.In view of the diversity and correlation of concepts in the field of artificial intelligence security, a hierarchical structure of artificial intelligence security ontology was proposed to make the ontology structure more diversified and extensible, provide rule constraints for the process of knowledge graph construction, and form an artificial intelligence security knowledge base.To effectively utilize feature information and reduce noise interference, named entity recognition algorithm based on BiLSTM-CRF and relationship extraction algorithm based on CNN-ATT were adopted for information extraction.The constructed artificial intelligence security dataset was then used to verify the performance of the algorithm.Based on the proposed ontology, the multi-level visualization results of the artificial intelligence security knowledge graph were presented in 3D effect, effectively connecting the multi-source security data information.The experimental results show that the constructed knowledge graph meets the multi-dimensional evaluation criteria of accuracy, consistency, completeness, and timeliness, providing knowledge support for artificial intelligence security research.Overall, the proposed method can help address the complexity and heterogeneity of security data in artificial intelligence and provide a more standardized, integrated approach to knowledge representation and analysis.http://www.cjnis.com.cn/thesisDetails#10.11959/j.issn.2096-109x.2023030artificial intelligence securityknowledge graphontology constructioninformation extractionvisualization
spellingShingle Xiaochen SHEN
Yinhui GE
Bo CHEN
Ling YU
Research on construction technology of artificial intelligence security knowledge graph
网络与信息安全学报
artificial intelligence security
knowledge graph
ontology construction
information extraction
visualization
title Research on construction technology of artificial intelligence security knowledge graph
title_full Research on construction technology of artificial intelligence security knowledge graph
title_fullStr Research on construction technology of artificial intelligence security knowledge graph
title_full_unstemmed Research on construction technology of artificial intelligence security knowledge graph
title_short Research on construction technology of artificial intelligence security knowledge graph
title_sort research on construction technology of artificial intelligence security knowledge graph
topic artificial intelligence security
knowledge graph
ontology construction
information extraction
visualization
url http://www.cjnis.com.cn/thesisDetails#10.11959/j.issn.2096-109x.2023030
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AT bochen researchonconstructiontechnologyofartificialintelligencesecurityknowledgegraph
AT lingyu researchonconstructiontechnologyofartificialintelligencesecurityknowledgegraph