The existing defense strategy selection methods based on game theory basically select the optimal defense strategy in the form of mixed strategy. However, it is hard for network managers to understand and implement the defense strategy in this way. To address this problem, we constructed the incomplete information stochastic game model for the dynamic analysis to predict multi-stage attack-defense process by combining Bayesian game theory and the Markov decision-making method. In addition, the payoffs are quantified from the impact value of attack-defense actions. Based on previous statements, we designed an optimal defense strategy selection method. The optimal defense strategy is selected, which regards defense effectiveness as the criterion. The proposed method is feasibly verified via a representative experiment. Compared to the classical strategy selection methods based on the game theory, the proposed method can select the optimal strategy of the multi-stage attack-defense process in the form of pure strategy, which has been proved more operable than the compared ones.
Optimal Network Defense Strategy Selection Based on Markov Bayesian Game
Zeng-Guang Wang,Yu Lu,Xi Li,W. Nie
Published 2019 in KSII Transactions on Internet and Information Systems
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- Publication year
2019
- Venue
KSII Transactions on Internet and Information Systems
- Publication date
2019-11-30
- Fields of study
Computer Science
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