To explore the efficiency of Cluster-GCN on Cybersecurity

Conference: CAIBDA 2022 - 2nd International Conference on Artificial Intelligence, Big Data and Algorithms
06/17/2022 - 06/19/2022 at Nanjing, China

Proceedings: CAIBDA 2022

Pages: 4Language: englishTyp: PDF

Authors:
Zhang, Qingwei; Kang, Zhiwen; Liu, Jia; Wang, Yue; Gao, Zongbao; Fang, Peng; Zhou, Bo (China Mobile Group Design Institute Co., Ltd Shandong Branch, China)
Xu, Hongkui (Shandong Jianzhu University Jinan, China)

Abstract:
The detection and protection of Cyberattacks are always challenging due to the complexed and varied Cyberattack schemes. Research on knowledge graphs is becoming increasingly mature in many fields. To construct a cybersecurity knowledge base, researchers have combined the concept of the knowledge graph with cybersecurity. In this paper, we apply cluster-based graph convolutional network (Cluster-GCN) to explore the graph cluster structure, which emphasizes the harmful vulnerability and exposure for a system that providing a prevention of potential malicious attack. In order to explore the efficiency of Cluster-GCN on vulnerabilities detection, we also compare it with convolutional neural network and traditional graph convolutional network.