Intelligent Threat Detection—AI-Driven Analysis of Honeypot Data to Counter Cyber Threats

Author:

Lanka Phani1,Gupta Khushi1,Varol Cihan1ORCID

Affiliation:

1. Department of Computer Science, Sam Houston State University, Huntsville, TX 77340, USA

Abstract

Security adversaries are rampant on the Internet, constantly seeking vulnerabilities to exploit. The sheer proliferation of these sophisticated threats necessitates innovative and swift defensive measures to protect the vulnerable infrastructure. Tools such as honeypots effectively determine adversary behavior and safeguard critical organizational systems. However, it takes a significant amount of time to analyze these attacks on the honeypots, and by the time actionable intelligence is gathered from the attacker’s tactics, techniques, and procedures (TTPs), it is often too late to prevent potential damage to the organization’s critical systems. This paper contributes to the advancement of cybersecurity practices by presenting a cutting-edge methodology, capitalizing on the synergy between artificial intelligence and threat analysis to combat evolving cyber threats. The current research articulates a novel strategy, outlining a method to analyze large volumes of attacker data from honeypots utilizing large language models (LLMs) to assimilate TTPs and apply this knowledge to identify real-time anomalies in regular user activity. The effectiveness of this model is tested in real-world scenarios, demonstrating a notable reduction in response time for detecting malicious activities in critical infrastructure. Moreover, we delve into the proposed framework’s practical implementation considerations and scalability, underscoring its adaptability in diverse organizational contexts.

Publisher

MDPI AG

Reference30 articles.

1. (2024, April 24). Rising Cyber Threats Pose Serious Concerns for Financial Stability. Available online: https://www.imf.org/en/Blogs/Articles/2024/04/09/rising-cyber-threats-pose-serious-concerns-for-financial-stability.

2. (2024, April 24). Data Breach Action Guide. Available online: https://www.ibm.com/reports/data-breach-action-guide.

3. (2024, April 24). COVID-19 Continues to Create a Larger Surface Area for Cyberattacks. Available online: https://www.vmware.com/content/dam/digitalmarketing/vmware/en/pdf/docs/vmwcb-report-covid-19-continues-to-create-a-larger-surface-area-for-cyberattacks.pdf.

4. (2024, April 24). Impact of COVID-19 on Cybersecurity. Available online: https://www2.deloitte.com/ch/en/pages/risk/articles/impact-covid-cybersecurity.html.

5. (2024, April 24). What’s the Difference Between a High Interaction Honeypot and a Low Interaction Honeypot?. Available online: https://www.akamai.com/blog/security/high-interaction-honeypot-versus-low-interaction-honeypot-comparison.

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