251 matches found
Enhancing Adversarial Robustness of IoT Intrusion Detection Via SHAP-Based Attribution Fingerprinting
The rapid proliferation of Internet of Things IoT devices has transformed numerous industries by enabling seamless connectivity and data-driven automation. However, this expansion has also exposed IoT networks to increasingly sophisticated security threats, including adversarial attacks targeting...
AthenaBench: A Dynamic Benchmark for Evaluating LLMs in Cyber Threat Intelligence
Large Language Models LLMs have demonstrated strong capabilities in natural language reasoning, yet their application to Cyber Threat Intelligence CTI remains limited. CTI analysis involves distilling large volumes of unstructured reports into actionable knowledge, a process where LLMs could...
The Attribution Story of WhisperGate: An Academic Perspective
This paper explores the challenges of cyberattack attribution, specifically APTs, applying the case study approach for the WhisperGate cyber operation of January 2022 executed by the Russian military intelligence service GRU and targeting Ukrainian government entities. The study provides a detail...
EUVD-2019-14210
Malware in sbrugna...
EUVD-2020-20128
Malware in sbrugna...
EUVD-2024-44066
Malicious code in bioql PyPI...
EUVD-2023-1560
Malicious code in bioql PyPI...
EUVD-2022-25453
Malicious code in bioql PyPI...
EUVD-2023-33021
Malicious code in bioql PyPI...
EUVD-2022-34756
Malicious code in bioql PyPI...
EUVD-2022-44938
Malicious code in bioql PyPI...
EUVD-2023-25264
Malicious code in bioql PyPI...
EUVD-2024-2028
Malicious code in bioql PyPI...
MalEval Android Malware Evaluation Framework
This repository contains the source code of MalEval, an evaluation framework for Android malware behavior auditing, focusing on explaining and substantiating malicious behaviors. The framework provides expert-verified reports, curated metadata, and model outputs to enable reproducible evaluation ...
Beyond Classification: Evaluating LLMs for Fine-Grained Automatic Malware Behavior Auditing
Automated malware classification has achieved strong detection performance. Yet, malware behavior auditing seeks causal and verifiable explanations of malicious activities -- essential not only to reveal what malware does but also to substantiate such claims with evidence. This task is challengin...
Cyber Threat Hunting: Non-Parametric Mining of Attack Patterns from Cyber Threat Intelligence for Precise Threats Attribution
With the ever-changing landscape of cyber threats, identifying their origin has become paramount, surpassing the simple task of attack classification. Cyber threat attribution gives security analysts the insights they need to device effective threat mitigation strategies. Such strategies empower...
Brute Force
Overview Affected versions of this package are vulnerable to Brute Force via the authentication process in the Userpass or LDAP systems. An attacker can circumvent intended user lockout protections by exploiting differences in user entity alias attribution between pre-flight and full login...
AuthPrint: Fingerprinting Generative Models against Malicious Model Providers
Generative models are increasingly adopted in high-stakes domains, yet current deployments offer no mechanisms to verify the origin of model outputs. We address this gap by extending model fingerprinting techniques beyond the traditional collaborative setting to one where the model provider may a...
Mechanistic Interpretability in the Presence of Architectural Obfuscation
Architectural obfuscation - e.g., permuting hidden-state tensors, linearly transforming embedding tables, or remapping tokens - has recently gained traction as a lightweight substitute for heavyweight cryptography in privacy-preserving large-language-model LLM inference. While recent work has sho...
FAME: a Lightweight Spatio-Temporal Network for Model Attribution of Face-Swap Deepfakes
The widespread emergence of face-swap Deepfake videos poses growing risks to digital security, privacy, and media integrity, necessitating effective forensic tools for identifying the source of such manipulations. Although most prior research has focused primarily on binary Deepfake detection, th...