APT-ATT: An efficient APT attribution model based on heterogeneous threat intelligence representation and CTGAN

IF 4.4 2区 计算机科学 Q1 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE
Saihua Cai, Gang Wang, Jinfu Chen, Shengran Wang, Kun Wang
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引用次数: 0

Abstract

With the rapid development of computer network, network security issues become increasingly severe. Due to the nature of highly organized, covert and persistent, advanced persistent threat (APT) has become a major security challenge. Accurately attributing APT attacks is crucial to effectively counter this threat, which not only quickly identifies the source of threats, but also provides the critical support for developing targeted defense strategies and reducing potential losses. However, existing APT attribution models still have significant shortcomings in terms of low efficiency in embedding heterogeneous threat intelligence, class imbalance and insufficient model stability. This paper proposes a novel lightweight APT attribution model called APT-ATT to effectively improve the accuracy and stability of APT attribution by combining the heterogeneous threat intelligence representation and conditional tabular generation adversarial network (CTGAN). Firstly, in response to the embedding requirements of heterogeneous long threat intelligence, a feature representation method combining N-Gram and TF-IDF is designed to quickly extract the local semantic features and use the chi-square statistics for feature selection. Secondly, the CTGAN is introduced to generate the realistic feature vectors to effectively alleviate the class imbalance problem. Finally, an ensemble learning framework is constructed based on the stacking strategy, with KNN, RF and XGBoost as the base learners and optimized logistic regression as the meta learner to further improve the attribution performance and model stability. Experiments on two cyber threat intelligence datasets show that the proposed APT-ATT method achieves an accuracy of 94.91%, along with excellent real-time performance and stronger stability.
APT- att:基于异构威胁情报表示和CTGAN的高效APT归因模型
随着计算机网络的飞速发展,网络安全问题日益严峻。由于其高度组织性、隐蔽性和持续性的特点,高级持续性威胁(APT)已成为重大的安全挑战。准确定位APT攻击对于有效应对这一威胁至关重要,这不仅可以快速识别威胁来源,还可以为制定有针对性的防御策略和减少潜在损失提供关键支持。然而,现有的APT归因模型在嵌入异构威胁情报方面仍然存在效率低、类不平衡、模型稳定性不足等显著不足。该文将异构威胁情报表示与条件表生成对抗网络(CTGAN)相结合,提出了一种新的轻量级APT归因模型APT- att,有效提高了APT归因的准确性和稳定性。首先,针对异构长威胁情报的嵌入需求,设计了N-Gram和TF-IDF相结合的特征表示方法,快速提取局部语义特征,并利用卡方统计量进行特征选择。其次,引入CTGAN算法生成逼真的特征向量,有效缓解类不平衡问题;最后,构建了基于叠加策略的集成学习框架,以KNN、RF和XGBoost作为基础学习器,以优化后的逻辑回归作为元学习器,进一步提高归因性能和模型稳定性。在两个网络威胁情报数据集上的实验表明,本文提出的APT-ATT方法准确率达到94.91%,具有优异的实时性和较强的稳定性。
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来源期刊
Computer Networks
Computer Networks 工程技术-电信学
CiteScore
10.80
自引率
3.60%
发文量
434
审稿时长
8.6 months
期刊介绍: Computer Networks is an international, archival journal providing a publication vehicle for complete coverage of all topics of interest to those involved in the computer communications networking area. The audience includes researchers, managers and operators of networks as well as designers and implementors. The Editorial Board will consider any material for publication that is of interest to those groups.
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