Proceedings Article10.1145/3319535.3363224
Log2vec: A Heterogeneous Graph Embedding Based Approach for Detecting Cyber Threats within Enterprise
Fucheng Liu,Yu Wen,Zhang Dongxue,Xihe Jiang,Xinyu Xing,Dan Meng +5 more
- 06 Nov 2019
- pp 1777-1794
258
TL;DR: This work proposes log2vec, a heterogeneous graph embedding based modularized method that remarkably outperforms state-of-the-art approaches, such as deep learning and hidden markov model (HMM), and shows its capability to detect malicious events in various attack scenarios.
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Abstract: Conventional attacks of insider employees and emerging APT are both major threats for the organizational information system. Existing detections mainly concentrate on users' behavior and usually analyze logs recording their operations in an information system. In general, most of these methods consider sequential relationship among log entries and model users' sequential behavior. However, they ignore other relationships, inevitably leading to an unsatisfactory performance on various attack scenarios. We propose log2vec, a heterogeneous graph embedding based modularized method. First, it involves a heuristic approach that converts log entries into a heterogeneous graph in the light of diverse relationships among them. Next, it utilizes an improved graph embedding appropriate to the above heterogeneous graph, which can automatically represent each log entry into a low-dimension vector. The third component of log2vec is a practical detection algorithm capable of separating malicious and benign log entries into different clusters and identifying malicious ones. We implement a prototype of log2vec. Our evaluation demonstrates that log2vec remarkably outperforms state-of-the-art approaches, such as deep learning and hidden markov model (HMM). Besides, log2vec shows its capability to detect malicious events in various attack scenarios.
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Citations
A High Accuracy and Adaptive Anomaly Detection Model With Dual-Domain Graph Convolutional Network for Insider Threat Detection
TL;DR: Wang et al. as discussed by the authors proposed Dual-Domain Graph Convolutional Network (DD-GCN), a graph-based modularized method for high accuracy and adaptive insider threat detection.
KnowGraph: Knowledge-Enabled Anomaly Detection via Logical Reasoning on Graph Data
Andy Zhou,Xiaojun Xu,Ramesh Raghunathan,Alok Lal,Xiaohong Guan,Bin Yu,Bo Li +6 more
- 10 Oct 2024
TL;DR: KnowGraph integrates domain knowledge with data-driven learning for enhanced graph-based anomaly detection, outperforming state-of-the-art baselines in transductive and inductive settings, with substantial gains in average precision and improved detection performance under extreme class imbalance.
Insider Threat Detection Based On Heterogeneous Graph Neural Network
Tian Tian,Ying Gong,Bo Jiang,Junrong Liu,Huamin Feng,Zhigang Lu +5 more
- 01 Nov 2023
TL;DR: The proposed ITDE model utilizes heterogeneous graph neural network to detect insider threats by analyzing user behavior and the implicit relationships between users. It effectively captures complex graph structure information and generates node embedding based on meta-path based neighbors.
Investigating and improving log parsing in practice
Ying Fu,Meng Yan,Jian Xu,Jianguo Li,Zhongxin Liu,Xiaohong Zhang,Dan Yang +6 more
- 07 Nov 2022
TL;DR: Wang et al. as mentioned in this paper proposed Drain+ based on a state-of-the-art log parser Drain, which includes a statistical-based separators generation component, which generates separators automatically for log message splitting, and a candidate event template merging component which merges the candidate event templates by a template similarity method.
Context-Aware Intrusion Detection in Industrial Control Systems
Md Raihan Ahmed,Mu Zhang +1 more
- 20 Nov 2023
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