Beyond Words: On Large Language Models Actionability in Mission-Critical Risk Analysis
Context. Risk analysis assesses potential risks in specific scenarios. Risk analysis principles are context-less; the same methodology can be applied to a risk connected to health and information technology security. Risk analysis requires a vast knowledge of national and international regulations a...
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Zusammenfassung: | Context. Risk analysis assesses potential risks in specific scenarios. Risk
analysis principles are context-less; the same methodology can be applied to a
risk connected to health and information technology security. Risk analysis
requires a vast knowledge of national and international regulations and
standards and is time and effort-intensive. A large language model can quickly
summarize information in less time than a human and can be fine-tuned to
specific tasks.
Aim. Our empirical study aims to investigate the effectiveness of
Retrieval-Augmented Generation and fine-tuned LLM in risk analysis. To our
knowledge, no prior study has explored its capabilities in risk analysis.
Method. We manually curated 193 unique scenarios leading to 1283
representative samples from over 50 mission-critical analyses archived by the
industrial context team in the last five years. We compared the base GPT-3.5
and GPT-4 models versus their Retrieval-Augmented Generation and fine-tuned
counterparts. We employ two human experts as competitors of the models and
three other human experts to review the models and the former human experts'
analysis. The reviewers analyzed 5,000 scenario analyses.
Results and Conclusions. Human experts demonstrated higher accuracy, but LLMs
are quicker and more actionable. Moreover, our findings show that RAG-assisted
LLMs have the lowest hallucination rates, effectively uncovering hidden risks
and complementing human expertise. Thus, the choice of model depends on
specific needs, with FTMs for accuracy, RAG for hidden risks discovery, and
base models for comprehensiveness and actionability. Therefore, experts can
leverage LLMs as an effective complementing companion in risk analysis within a
condensed timeframe. They can also save costs by averting unnecessary expenses
associated with implementing unwarranted countermeasures. |
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DOI: | 10.48550/arxiv.2406.10273 |