Abstract

Network security situational assessment, the core task of network security situational awareness, can obtain security situation by comprehensively analyzing various factors that affect network status. Thus, network security situational assessment can provide accurate security state evaluation and security trend prediction for users. Although plenty of network security situational assessment methods have been proposed, there are still many problems to solve. First, because of high dimensionality of input data, computational complexity in model construction could be very high. Moreover, most of the existing schemes trade computational overhead for accuracy. Second, due to the lack of centralized standard, the weights of indicators are usually determined empirically or by subjective opinions of domain expert. To solve the above problems, we propose a novel network security situation assessment method based on stack autoencoding network and back propagation neural network. In stack autoencoding network and back propagation neural network, to reduce the data storage overhead and improve computational efficiency, we use stack autoencoding network to reduce the dimensions of the indicator data. And the low-dimensional data output by hidden layer of stack autoencoding network will be the input data of the error back propagation neural network. Then, the back propagation neural network algorithm is adopted to perform network security situation assessment. Finally, extensive experiments are conducted to verify the effectiveness of the proposed method.

Highlights

  • With the prevalence of big data, the amount of services provided by Internet witnesses an explosive growth.[1]

  • Network security situation assessment determines the performance of techniques for network security situational awareness (NSSA), and it is of great importance to comprehensively understand the state of network environment, the ability to detect network security, and handle network threat events

  • In section ‘‘Related work,’’ we review the related work, and give some preliminaries in section ‘‘Preliminaries.’’ we propose the network security situation assessment method based on Stack autoencoding network (SAE) + back propagation neural network (BPNN) in section ‘‘Proposed model.’’ In section ‘‘Experimental study,’’ we briefly introduce the experimental environment and data we used, and the experimental results are analyzed in detail

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Summary

Introduction

With the prevalence of big data, the amount of services provided by Internet witnesses an explosive growth.[1]. Network security situation assessment determines the performance of techniques for NSSA, and it is of great importance to comprehensively understand the state of network environment, the ability to detect network security, and handle network threat events. Stack autoencoding network (SAE) is used to reduce the dimensionality of non-linear data and the complexity of model construction before performing security situation assessment; 2. In section ‘‘Related work,’’ we review the related work, and give some preliminaries in section ‘‘Preliminaries.’’ we propose the network security situation assessment method based on SAE + BPNN in section ‘‘Proposed model.’’ In section ‘‘Experimental study,’’ we briefly introduce the experimental environment and data we used, and the experimental results are analyzed in detail.

Related work
Calculate new connection weights and thresholds
Experimental study
Conclusion
Evaluation algorithm
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