An Improved Prediction Model for the Network Security Situation

This research seeks to improve the long training time of traditional methods that use support vector machine (SVM) for cyber security situation prediction. This paper proposes a cyber security situation prediction model based on the MapReduce and SVM. The base classifier for this model uses an SVM. In order to find the optimal parameters of the SVM, parameter optimization is performed by the Cuckoo Search (CS). Considering the problem of time cost when a data set is too large, we choose to use MapReduce to perform distributed training on SVMs to improve training speed. Experimental results show that the SVM network security situation prediction model using MapReduce and CS has improved the accuracy and decreased the training time cost compared to the traditional SVM prediction model.

[1]  Xin He,et al.  Quantum-inspired cuckoo co-search algorithm for no-wait flow shop scheduling , 2018, Applied Intelligence.

[2]  Dongmei Zhao,et al.  Study on network security situation awareness based on particle swarm optimization algorithm , 2018, Comput. Ind. Eng..

[3]  Hao Hu,et al.  Quantitative Method for Network Security Situation Based on Attack Prediction , 2017, Secur. Commun. Networks.

[4]  Shifei Ding,et al.  An overview on semi-supervised support vector machine , 2017, Neural Computing and Applications.

[5]  Yue Zhang,et al.  APPA: An anonymous and privacy preserving data aggregation scheme for fog-enhanced IoT , 2019, J. Netw. Comput. Appl..

[6]  Yu Zhang,et al.  Research on QoS service composition based on coevolutionary genetic algorithm , 2018, Soft Comput..

[7]  Amiya Nayak,et al.  An improved network security situation assessment approach in software defined networks , 2019, Peer-to-Peer Netw. Appl..

[8]  Nan Zhang,et al.  Twin support vector machine: theory, algorithm and applications , 2017, Neural Computing and Applications.

[9]  Xianyu Kong,et al.  Real-time eutrophication status evaluation of coastal waters using support vector machine with grid search algorithm. , 2017, Marine pollution bulletin.

[10]  Zhongzhi Shi,et al.  A multiway p-spectral clustering algorithm , 2019, Knowl. Based Syst..

[11]  Ramchandra Manthalkar,et al.  Time series decomposition and predictive analytics using MapReduce framework , 2019, Expert Syst. Appl..

[12]  Jinling Liang,et al.  Multistability of complex-valued neural networks with distributed delays , 2016, Neural Computing and Applications.

[13]  Youness Madani,et al.  Sentiment analysis using semantic similarity and Hadoop MapReduce , 2018, Knowledge and Information Systems.

[14]  Chip Stewart,et al.  Optimizing event selection with the random grid search , 2017, Comput. Phys. Commun..

[15]  João Paulo Papa,et al.  Improving optimum-path forest learning using bag-of-classifiers and confidence measures , 2017, Pattern Analysis and Applications.

[16]  J. Vijayashree,et al.  A Machine Learning Framework for Feature Selection in Heart Disease Classification Using Improved Particle Swarm Optimization with Support Vector Machine Classifier , 2019, Programming and Computer Software.