Research on multi-source heterogeneous data structure analysis technique based on AI security detection algorithm

Chunyan Yang, Songming Han, Jieke Lu, Shaofeng Ming, Wei Zhang
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Abstract

The relationships between multi-source heterogeneous data and elements in the field of artificial intelligence security are integrated and analyzed in this paper, including attack information, data information, and other security data. Targeting the associated complex entity concepts that existed in the construction of the artificial intelligence security knowledge graph, the ontology structure is divided into theory layer, problem layer, and measure layer, making the artificial intelligence security ontology more diverse and expandable. The addition of the measure layer provides more accurate security decision-making reasoning for the subsequent knowledge inference stage.
基于人工智能安全检测算法的多源异构数据结构分析技术研究
本文整合分析了人工智能安全领域多源异构数据和要素之间的关系,包括攻击信息、数据信息和其他安全数据。针对人工智能安全知识图谱构建中存在的关联复杂实体概念,将本体结构分为理论层、问题层和度量层,使人工智能安全本体更具多样性和可扩展性。度量层的加入为后续的知识推理阶段提供了更加准确的安全决策推理。
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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