CRLGMay 23

CyberMaskQA: A Privacy-Aware Benchmark for Evaluating Large Language Models in Cybersecurity Question Answering

arXiv:2605.2476510.0
Predicted impact top 33% in CR · last 90 daysOriginality Incremental advance
AI Analysis

For researchers and practitioners developing privacy-preserving LLMs for cybersecurity, this benchmark addresses the lack of annotated datasets that jointly test reasoning and privacy in operational contexts.

The paper introduces CYBERMASKQA, a privacy-aware benchmark for evaluating LLMs in cybersecurity QA that includes realistic contexts with sensitive identifiers. The benchmark enables joint evaluation of operational reasoning and privacy preservation, demonstrating utility for developing deployable models.

Large language models (LLMs) are increasingly applied to cybersecurity question answering (QA) for critical tasks such as incident response and vulnerability analysis. However, real-world operational contexts, including system logs and network configurations, inherently contain sensitive identifiers, e.g., IP addresses, host names, and user accounts. Processing this data with cloud-based models is often unsafe or infeasible in regulated environments. Furthermore, progress in privacy-preserving QA is hindered by the lack of annotated, context-rich datasets capable of jointly evaluating operational reasoning and privacy preservation. To address this gap, we introduce CYBERMASKQA, a privacy-aware QA benchmark covering key security domains. Unlike existing benchmarks that primarily test factual knowledge, CYBERMASKQA grounds questions in realistic organizational contexts with explicit causal dependencies among assets and privileges. Generated through a systematic pipeline, the dataset combines human-curated base scenarios with LLM-driven semantic expansion, annotating each instance with precise private entity labels to enable controlled information disclosure. Evaluations of QA accuracy and masking performance demonstrate the benchmark's utility for developing deployable, context-aware cybersecurity models and facilitating nuanced studies of privacy-utility trade-offs. Upon acceptance, we will release the dataset and the generation framework.

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