Sunday, November 24, 2024
Homecyber securityLogShield: A New Framework that Detects the APT Attack Patterns

LogShield: A New Framework that Detects the APT Attack Patterns

Published on

There have been several cases of GPT model-based detection for various attacks from system logs.

However, there has been no dedicated framework for detecting APTs as they use a low and slow approach to compromise the systems.

Security researchers have recently unveiled a cutting-edge framework known as LogShield. This innovative tool leverages the self-attention capabilities of transformers to identify attack patterns associated with Advanced Persistent Threats (APTs).

- Advertisement - SIEM as a Service

By analyzing network logs, LogShield can detect subtle indicators of APTs that may have otherwise gone unnoticed, providing a powerful defense against these sophisticated attacks.

According to the researchers, the efficiency of this framework has been reported to be 95% and 98%.

LogShield

The main purpose of using language models for detecting malicious events is because they have been designed to process large sequences of words or log data, which is useful when processing records of events on a cyber attack.

Document
Protect Your Storage With SafeGuard

Is Your Storage & Backup Systems Fully Protected? – Watch 40-second Tour of SafeGuard

StorageGuard scans, detects, and fixes security misconfigurations and vulnerabilities across hundreds of storage and backup devices.

Additionally, the self-attention mechanism of GPT models can assign different weights to different events based on their relativity to the APTs and can be adjusted concerning the event’s importance.

APT detection
APT detection LogShield

Machine learning techniques have been used to detect attack patterns instead of rule-based or signature-based attack detection methods, which have relatively low performance when detecting Zero-Day APTs.

Moreover, several deep learning-based methods have been explored to detect APT attacks.

Limitations of LogShield

Though LogShield has superior performance, there is a limitation to this framework. As it has high performance, it also comes with an increased memory consumption and longer computational time. As part of the research, LogShield and LSTM models have been used. 

However, after many experiments, efficiency was achieved with a 98% F1-score in APT detection.

A report about LogShield has been published, providing detailed information about the training models using their statistical data and other information.

Patch Manager Plus, the one-stop solution for automated updates of over 850 third-party applications: Try Free Trial.

Eswar
Eswar
Eswar is a Cyber security content editor with a passion for creating captivating and informative content. With years of experience under his belt in Cyber Security, he is covering Cyber Security News, technology and other news.

Latest articles

Nearest Neighbor Attacks: Russian APT Hack The Target By Exploiting Nearby Wi-Fi Networks

Recent research has revealed that a Russian advanced persistent threat (APT) group, tracked as...

240+ Domains Used By PhaaS Platform ONNX Seized by Microsoft

Microsoft's Digital Crimes Unit (DCU) has disrupted a significant phishing-as-a-service (PhaaS) operation run by...

Russian TAG-110 Hacked 60+ Users With HTML Loaded & Python Backdoor

The Russian threat group TAG-110, linked to BlueDelta (APT28), is actively targeting organizations in...

Earth Kasha Upgraded Their Arsenal With New Tactics To Attack Organizations

Earth Kasha, a threat actor linked to APT10, has expanded its targeting scope to...

Free Webinar

Protect Websites & APIs from Malware Attack

Malware targeting customer-facing websites and API applications poses significant risks, including compliance violations, defacements, and even blacklisting.

Join us for an insightful webinar featuring Vivek Gopalan, VP of Products at Indusface, as he shares effective strategies for safeguarding websites and APIs against malware.

Discussion points

Scan DOM, internal links, and JavaScript libraries for hidden malware.
Detect website defacements in real time.
Protect your brand by monitoring for potential blacklisting.
Prevent malware from infiltrating your server and cloud infrastructure.

More like this

Nearest Neighbor Attacks: Russian APT Hack The Target By Exploiting Nearby Wi-Fi Networks

Recent research has revealed that a Russian advanced persistent threat (APT) group, tracked as...

240+ Domains Used By PhaaS Platform ONNX Seized by Microsoft

Microsoft's Digital Crimes Unit (DCU) has disrupted a significant phishing-as-a-service (PhaaS) operation run by...

Russian TAG-110 Hacked 60+ Users With HTML Loaded & Python Backdoor

The Russian threat group TAG-110, linked to BlueDelta (APT28), is actively targeting organizations in...