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
Unsupervised Representation Learning for Fault Diagnosis in IT Infrastructure
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- 25 Jul 2023
TL;DR: HIT, an innovative unsupervised representation learning paradigm founded on hypergraphs, is introduced, tailored explicitly for multi-source IT infrastructure monitoring data, yielding promising outcomes.
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Eth2Vec: Learning Contract-Wide Code Representations for Vulnerability Detection on Ethereum Smart Contracts
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A Hash-based Multidimensional Graph Neural Network Approach for Zero Trust Oriented Access Control Security
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Hopper: Modeling and Detecting Lateral Movement (extended Report)
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TL;DR: Hopper, a system for detecting lateral movement, constructs a graph of login activity and identifies suspicious sequences using an inference algorithm, achieving a 94.5% detection rate on a 15-month enterprise dataset with minimal false positives.
LLM4ITD: Insider Threat Detection with Fine-Tuned Large Language Models
M. Zhang,Xinru Liang,Feng Tian,Yuting Yang,Honglan Yu,Bo Li +5 more
- 04 Mar 2024
TL;DR: This paper proposes LLM4ITD, a fine-tuned Large Language Model for insider threat detection, addressing limitations of existing methods by using a prompt construction module and parameter-efficient fine-tuning, outperforming state-of-the-art methods on the CERT dataset.
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