Journals
  Publication Years
  Keywords
Search within results Open Search
Please wait a minute...
For Selected: Toggle Thumbnails
Low-latency DDoS attack detection based on hybrid feature selection
Lixia XIE, Jiamin WANG, Hongyu YANG, Ze HU, Xiang CHENG
Journal of Computer Applications    2025, 45 (10): 3231-3240.   DOI: 10.11772/j.issn.1001-9081.2024101457
Abstract27)      PDF (2282KB)(179)       Save

Many Distributed Denial of Service (DDoS) attack detection methods focus on improving model performance, but ignore the influence of traffic sample distribution and feature dimension on detection performance, resulting in the model learning redundant information. To address the problems of network traffic class imbalance and feature redundancy, a Hybrid Feature Selection method based on Multiple Evaluation Criteria (HFS-MEC) was proposed. Firstly, the Pearson Correlation Coefficient (PCC) and Mutual Information (MI) were considered comprehensively to select the correlation features. Then, the Sequential Backward Selection (SBS) algorithm based on Variance Inflation Factor (VIF) was designed to reduce the feature redundancy and further reduce the feature dimension. At the same time, to balance the detection performance and computation time, a Low-latency DDoS attack detection model based on Simple Recurrent Unit (SRU) (L-DDoS-SRU) was designed. Experiments were carried out on the CICIDS2017 and CICDDoS2019 datasets. The results show that HFS-MEC reduces the feature dimensions from 78 and 88 to 31 and 41, respectively; on the CICDDoS2019 dataset, L-DDoS-SRU reduces the detection time to only 40.34 seconds with a recall of 99.38%, which is improved by 8.47% compared to that of Long Short-Term Memory (LSTM), and is increased by 9.76% compared to that of Gated Recurrent Unit (GRU). The above verifies that the proposed method improves the detection performance and reduces the detection time effectively.

Reference | Related Articles | Metrics
Scoring system for training simulator of military power
MENG Fei-xiang CHENG Pei-yuan YANG Xu-feng
Journal of Computer Applications    2011, 31 (10): 2865-2868.   DOI: 10.3724/SP.J.1087.2011.02865
Abstract957)      PDF (639KB)(568)       Save
Most training simulators of military power cannot give reasonable evaluation to the operation process of soldiers, because of being lack of scoring system. Therefore, in this paper, the scoring system for training simulator of military power based on the operating rule of actually weapon and the knowledge of large-scale system theory and expert system was analyzed. The operating rule of the military power and the key technologies of scoring system such as building up scoring rule, selecting scoring standard, selecting coefficient for the score deductions, calculation of the scoring system and program process of the scoring system were deeply analyzed in this paper. At last, a very useful scoring system for the training simulator of gas turbine generator was developed.
Related Articles | Metrics