Visible to the public Biblio

Filters: Author is Shen, Yongjun  [Clear All Filters]
2020-07-24
Wang, Wei, Zhang, Guidong, Shen, Yongjun.  2018.  A CP-ABE Scheme Supporting Attribute Revocation and Policy Hiding in Outsourced Environment. 2018 IEEE 9th International Conference on Software Engineering and Service Science (ICSESS). :96—99.
Aiming at the increasing popularity of mobile terminals, a CP-ABE scheme adapted to lightweight decryption at the mobile end is proposed. The scheme has the function of supporting timely attributes revocation and policy hiding. Firstly, we will introduce the related knowledge of attribute base encryption. After that, we will give a specific CP-ABE solution. Finally, in the part of the algorithm analysis, we will give analysis performance and related security, and compare this algorithm with other algorithms.
2020-05-08
Zhang, Shaobo, Shen, Yongjun, Zhang, Guidong.  2018.  Network Security Situation Prediction Model Based on Multi-Swarm Chaotic Particle Optimization and Optimized Grey Neural Network. 2018 IEEE 9th International Conference on Software Engineering and Service Science (ICSESS). :426—429.
Network situation value is an important index to measure network security. Establishing an effective network situation prediction model can prevent the occurrence of network security incidents, and plays an important role in network security protection. Through the understanding and analysis of the network security situation, we can see that there are many factors affecting the network security situation, and the relationship between these factors is complex., it is difficult to establish more accurate mathematical expressions to describe the network situation. Therefore, this paper uses the grey neural network as the prediction model, but because the convergence speed of the grey neural network is very fast, the network is easy to fall into local optimum, and the parameters can not be further modified, so the Multi-Swarm Chaotic Particle Optimization (MSCPO)is used to optimize the key parameters of the grey neural network. By establishing the nonlinear mapping relationship between the influencing factors and the network security situation, the network situation can be predicted and protected.