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2022-09-09
Xu, Rong-Zhen, He, Meng-Ke.  2020.  Application of Deep Learning Neural Network in Online Supply Chain Financial Credit Risk Assessment. 2020 International Conference on Computer Information and Big Data Applications (CIBDA). :224—232.
Under the background of "Internet +", in order to solve the problem of deeply mining credit risk behind online supply chain financial big data, this paper proposes an online supply chain financial credit risk assessment method based on deep belief network (DBN). First, a deep belief network evaluation model composed of Restricted Boltzmann Machine (RBM) and classifier SOFTMAX is established, and the performance evaluation test of three kinds of data sets is carried out by using this model. Using factor analysis to select 8 indicators from 21 indicators, and then input them into RBM for conversion to form a more scientific evaluation index, and finally input them into SOFTMAX for evaluation. This method of online supply chain financial credit risk assessment based on DBN is applied to an example for verification. The results show that the evaluation accuracy of this method is 96.04%, which has higher evaluation accuracy and better rationality compared with SVM method and Logistic method.
2020-02-10
Zhang, Yu, Zhao, Shiman, Zhang, Jianzhong, Ma, Xiaowei, Huang, Feilong.  2019.  STNN: A Novel TLS/SSL Encrypted Traffic Classification System Based on Stereo Transform Neural Network. 2019 IEEE 25th International Conference on Parallel and Distributed Systems (ICPADS). :907–910.

Nowadays, encrypted traffic classification has become a challenge for network monitoring and cyberspace security. However, the existing methods cannot meet the requirements of encrypted traffic classification because of the encryption protocol in communication. Therefore, we design a novel neural network named Stereo Transform Neural Network (STNN) to classify encrypted network traffic. In STNN, we combine Long Short Term Memory (LSTM) and Convolution Neural Network (CNN) based on statistical features. STNN gains average precision about 95%, average recall about 95%, average F1-measure about 95% and average accuracy about 99.5% in multi-classification. Besides, the experiment shows that STNN obviously accelerates the convergence rate and improves the classification accuracy.