Jiangtao Xie’s research while affiliated with State Key Laboratory of Scientific and Engineering Computing and other places

What is this page?


This page lists works of an author who doesn't have a ResearchGate profile or hasn't added the works to their profile yet. It is automatically generated from public (personal) data to further our legitimate goal of comprehensive and accurate scientific recordkeeping. If you are this author and want this page removed, please let us know.

Publications (1)


Figure 1. The framework of the proposed method.
Figure 2. The structure of the DEMTR model.
Figure 3. Examples of the Dirichlet distribution (triple classification is taken as an example, where the sample label is the first category). The Dirichlet distribution is different when the predictions of model are (a) accurate and certain (AC), (b) accurate and uncertain (AU), (c) inaccurate and certain (IC), (d) inaccurate and uncertain (IU).
Figure 4. Histogram of uncertainty distribution for (a) BNN SVI, (b) MC Dropout and (c) the proposed DEMTR.
Figure 5. The relationship between F1-score and openness.

+3

Open Set Recognition for Malware Traffic via Predictive Uncertainty
  • Article
  • Full-text available

January 2023

·

467 Reads

·

2 Citations

Xue Li

·

Jinlong Fei

·

Jiangtao Xie

·

[...]

·

Zan Qi

Existing machine learning-based malware traffic recognition techniques can effectively detect abnormal behaviors in the network. However, almost all of them focus on a closed-set scenario in which the data used for training and testing come from the same label space. Since sophisticated malware and advanced persistent threats are evolving, it is impossible to exhaust all attacks to train a complete recognition model under the existing technical conditions. Therefore, recognition in the real network is an open-set problem, i.e., the recognition system should identify unknown and unseen attacks at test time. In this paper, we propose an uncertainty-aware method to identify known malicious traffic accurately and handle unknown traffic effectively. This method employs predictive uncertainty in deep learning as an indicator for unknown class detection. The predictive uncertainty represents the confidence in neural network predictions. In particular, the Deep Evidence Malware Traffic Recognition (DEMTR) model is presented to provide the multi-classification probability and predictive uncertainty in open-set scenarios using evidential deep learning. We demonstrate the performance of DEMTR on the MCFP dataset. Experimental results indicate that the proposed model outperforms the baseline methods in accuracy and F1-score.

Download

Citations (1)


... Zhang et al. [22] also used 8 MCFP malware classes in detecting encrypted malicious traffic. Li et al. [23] selected a random set of 20 MCFP malware classes for unknown malware class detection. Zhao et al. [24] used 10 MCFP malware classes in their prototype based learning method in malware classification. ...

Reference:

Classifying Malware Traffic Using Images and Deep Convolutional Neural Network
Open Set Recognition for Malware Traffic via Predictive Uncertainty