Li Heyu, Li Zhangmeizhi, Zhang Shuyan, Pu Xiao
Admission Office Changchun Sci-Tech University, Changchun, 130600, China.
The Petroleum Institute, China University of Petroleum-Beijing at Karamay, Karamay, 834000, China.
Sci Rep. 2024 Dec 4;14(1):30248. doi: 10.1038/s41598-024-81189-1.
With the widespread application of the Internet, network security issues have become increasingly prominent. As an important infrastructure of the Internet, the domain name server has been attacked in various forms. Traditional methods for detecting malicious domain servers are usually based on rules or feature engineering, requiring a large amount of manual participation and rule library updates. These methods cannot adapt to the constantly changing threat environment. In response to these issues, this study first improves the Transformer by adjusting its attention head and encoding method. Then, the model is combined with convolutional neural networks. Finally, a block-based ensemble classifier is used for classification detection. The relevant outcomes showed that the average accuracy score of the proposed method was as high as 95.8 points, the average detection time score was 96.8 points, the average feature extraction ability score of the model was 96.3 points, and the overall performance score was 97.6 points. This method has significant advantages over traditional methods in terms of accuracy and detection time, providing a new tool for detecting malicious domain servers.
随着互联网的广泛应用,网络安全问题日益突出。作为互联网的重要基础设施,域名服务器受到了各种形式的攻击。传统的恶意域名服务器检测方法通常基于规则或特征工程,需要大量的人工参与和规则库更新。这些方法无法适应不断变化的威胁环境。针对这些问题,本研究首先通过调整注意力头和编码方法对Transformer进行改进。然后,将该模型与卷积神经网络相结合。最后,使用基于块的集成分类器进行分类检测。相关结果表明,该方法的平均准确率高达95.8分,平均检测时间得分为96.8分,模型的平均特征提取能力得分为96.3分,整体性能得分为97.6分。该方法在准确性和检测时间方面比传统方法具有显著优势,为恶意域名服务器的检测提供了一种新工具。