Evaluating the Reliability of Digital Forensic Evidence Discovered by Large Language Model: A Case Study


연구 분야: Analysis



학회: 2025 IEEE 49th Annual Computers, Software, and Applications Conference (COMPSAC)


초록

The growing reliance on AI-identified digital evidence raises significant concerns about its reliability, particularly as large language models (LLMs) are increasingly integrated into forensic investigations. This paper proposes a structured framework that automates forensic artifact extraction, refines data through LLM-driven analysis, and validates results using a Digital Forensic Knowledge Graph (DFKG). Evaluated on a 13 GB forensic image dataset containing 61 applications, 2,864 databases, and 5,870 tables, the framework ensures artifact traceability and evidentiary consistency through deterministic Unique Identifiers (UIDs) and forensic cross-referencing. We propose this methodology to address challenges in ensuring the credibility and forensic integrity of AI-identified evidence, reducing classification errors, and advancing scalable, auditable methodologies. A comprehensive case study on this dataset demonstrates the framework’s effectiveness, achieving over 95% accuracy in artifact extraction, strong support of chain-of-custody adherence, and robust contextual consistency in forensic relationships. Key results validate the framework’s ability to enhance reliability, reduce errors, and establish a legally sound paradigm for AI-assisted digital forensics.


Author Profile
Jeel Piyushkumar Khatiwala

School of Criminal Justice College of Public Affairs University of Baltimore Maryland USA

United States
Author Profile
Daniel Kwaku Ntiamoah Addai

School of Criminal Justice College of Public Affairs University of Baltimore Maryland USA

United States
Author Profile
Weifeng Xu

School of Criminal Justice College of Public Affairs University of Baltimore Maryland USA

United States

📄 논문 정보

발행 연도 2025년
인용수 5
출판 국가 United States
사이트 IEEE
좋아요 수 0

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