comprehensive evaluation model
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Author(s):  
Bingjie Lin ◽  
Jie Cheng ◽  
Jiahui Wei ◽  
Ang Xia

The sensing of network security situation (NSS) has become a hot issue. This paper first describes the basic principle of Markov model and then the necessary and sufficient conditions for the application of Markov game model. And finally, taking fuzzy comprehensive evaluation model as the theoretical basis, this paper analyzes the application fields of the sensing method of NSS with Markov game model from the aspects of network randomness, non-cooperative and dynamic evolution. Evaluation results show that the sensing method of NSS with Markov game model is best for financial field, followed by educational field. In addition, the model can also be used in the applicability evaluation of the sensing methods of different industries’ network security situation. Certainly, in different categories, and under the premise of different sensing methods of network security situation, the proportions of various influencing factors are different, and once the proportion is unreasonable, it will cause false calculation process and thus affect the results.


2022 ◽  
Vol 355 ◽  
pp. 02034
Author(s):  
Shimin Wang ◽  
Zhimin Du

As the first process of the supply chain, fresh food supplier is the source of food safety, and also the key factor of the whole fresh food supply chain competition. AHP is used to establish the fresh food supplier selection index system. IT is used to calculate the weight of each evaluation index. Through the establishment of a comprehensive evaluation model, decision maker will comprehensively evaluate the strength of fresh food suppliers.


2021 ◽  
Vol 2021 ◽  
pp. 1-11
Author(s):  
Xinglong Kan ◽  
Lin Li

With the development of neural network technology and the rapid growth of China’s tourism economic income at this stage, the research on the comprehensive evaluation of tourism resources has gradually emerged. Based on this, this paper studies the neural network comprehensive evaluation model based on multispecies evolutionary genetic algorithm and designs the neural network analysis system of influencing factors of tourism resources based on multispecies evolutionary genetic algorithm. The collection and acquisition of data information are realized from the aspects of resource income status, tourism development investment, and sustainability evaluation in the tourism area. The multispecies evolutionary genetic algorithm is used for comprehensive analysis and evaluation. The algorithm can realize the complex analysis and comprehensive evaluation of the core influencing factors of neural network. Accurate analysis and evaluation were carried out according to the different characteristics of tourism resources and the current situation of tourism income. The results show that the neural network comprehensive evaluation model based on multispecies evolutionary genetic algorithm has the advantages of high practicability, good sorting effect of variable ratio, and good data integration. It can effectively analyze and compare the comprehensive evaluation factors affecting tourism resources in different ratios.


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