TSEE:用于网络空间安全的新型知识嵌入框架

Angxiao Zhao, Zhaoquan Gu, Yan Jia, Wenying Feng, Jianye Yang, Yanchun Zhang
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摘要

知识表示模型已被广泛研究,并为人工智能提供了重要基础。然而,现有的知识表示模型或相关知识嵌入方法大多针对静态或时态知识,并不适合时空相关性强的知识,如网络安全知识。本文提出了一种名为 TSEE 的知识嵌入框架来解决这一问题,该框架建立在 MDATA 模型的基础上,用于表示和利用网络安全动态知识。TSEE 由知识提取模块、知识表示模块、知识嵌入模块和态势感知模块组成。这些模块可以从不同来源获取、转换和嵌入网络安全知识,提高对各种复杂攻击的检测能力。我们在网络范围内进行了实验评估,实验结果验证了与现有的嵌入方法相比,该方法具有更高的预测精度和更强的可扩展性。该框架可在未来有效提高网络安全防御能力。
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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TSEE: a novel knowledge embedding framework for cyberspace security

Knowledge representation models have been extensively studied and they provide an important foundation for artificial intelligence. However, the existing knowledge representation models or related knowledge embedding methods mostly aim at static or temporal knowledge, which are not suitable for highly spatio-temporal relevant knowledge, such as the cyber security knowledge. In this paper, we propose a knowledge embedding framework called TSEE to handle this problem, which builds on the MDATA model to represent and utilize dynamic knowledge for cyber security. TSEE is composed of knowledge extraction module, knowledge representation module, knowledge embedding module, and situational awareness module. There modules can obtain, transform, and embed cyber security knowledge from different sources, improving the detection capabilities of various complicated attacks. We conduct experiments on the cyber range for evaluation, and the experimental results validate the higher prediction accuracy and stronger extendability than existing embedding methods. The framework can effectively improve the cyber security defense capabilities in the future.

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