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Main Authors: Okada, Hiroyuki, Oba, Tatsumi, Yanai, Naoto
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2601.03013
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author Okada, Hiroyuki
Oba, Tatsumi
Yanai, Naoto
author_facet Okada, Hiroyuki
Oba, Tatsumi
Yanai, Naoto
contents Security operation centers (SOCs) often produce analysis reports on security incidents, and large language models (LLMs) will likely be used for this task in the near future. We postulate that a better understanding of how veteran analysts evaluate reports, including their feedback, can help produce analysis reports in SOCs. In this paper, we aim to leverage LLMs for analysis reports. To this end, we first construct a Analyst-wise checklist to reflect SOC practitioners' opinions for analysis report evaluation through literature review and user study with SOC practitioners. Next, we design a novel LLM-based conceptual framework, named MESSALA, by further introducing two new techniques, granularization guideline and multi-perspective evaluation. MESSALA can maximize report evaluation and provide feedback on veteran SOC practitioners' perceptions. When we conduct extensive experiments with MESSALA, the evaluation results by MESSALA are the closest to those of veteran SOC practitioners compared with the existing LLM-based methods. We then show two key insights. We also conduct qualitative analysis with MESSALA, and then identify that MESSALA can provide actionable items that are necessary for improving analysis reports.
format Preprint
id arxiv_https___arxiv_org_abs_2601_03013
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle LLMs, You Can Evaluate It! Design of Multi-perspective Report Evaluation for Security Operation Centers
Okada, Hiroyuki
Oba, Tatsumi
Yanai, Naoto
Cryptography and Security
Security operation centers (SOCs) often produce analysis reports on security incidents, and large language models (LLMs) will likely be used for this task in the near future. We postulate that a better understanding of how veteran analysts evaluate reports, including their feedback, can help produce analysis reports in SOCs. In this paper, we aim to leverage LLMs for analysis reports. To this end, we first construct a Analyst-wise checklist to reflect SOC practitioners' opinions for analysis report evaluation through literature review and user study with SOC practitioners. Next, we design a novel LLM-based conceptual framework, named MESSALA, by further introducing two new techniques, granularization guideline and multi-perspective evaluation. MESSALA can maximize report evaluation and provide feedback on veteran SOC practitioners' perceptions. When we conduct extensive experiments with MESSALA, the evaluation results by MESSALA are the closest to those of veteran SOC practitioners compared with the existing LLM-based methods. We then show two key insights. We also conduct qualitative analysis with MESSALA, and then identify that MESSALA can provide actionable items that are necessary for improving analysis reports.
title LLMs, You Can Evaluate It! Design of Multi-perspective Report Evaluation for Security Operation Centers
topic Cryptography and Security
url https://arxiv.org/abs/2601.03013