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Bibliographic Details
Main Authors: Mehta, Astha, Selvanayagam, Niruthiha, Lam, Cedric, Li, Hengxu, Nguyen, Phuc-Nguyen, Lee, Raymond, McGoffin, Olivia, My, Luong, Collé, Arthur, Johnson, Jamie, Williams-King, David, Le, Linh
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2605.11029
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Table of Contents:
  • An attacker can split a malicious goal into sub-prompts that each look benign on their own and only become harmful in combination. Existing LLM safety benchmarks evaluate prompts one at a time, or across turns of a single chat, and so do not look for a malicious signal spread across separate sessions with no shared context. We build FragBench, a benchmark drawn from 24 real-world cyber-incident campaigns, which keeps the full attack trail: the multi-fragment kill chain, the per-fragment safety-judge verdicts, sandboxed execution traces, and a matched set of benign cover sessions. FragBench splits this trail into two paired tasks: an adversarial rewriter that hardens fragments against a single-turn safety judge (FragBench Attack), and a graph-based user-level detector trained on the resulting interactions (FragBench Defense). The single-turn judge is near chance on the released corpus by construction, but four GNN variants and three classical-ML baselines all recover the cross-session feature, reaching aggregate event-level F1 = 0.88-0.96. Defending against fragmented LLM misuse therefore requires modeling the cross-session interaction graph, rather than isolated prompts. Our generator, rewriter, sandbox harness, and detector are released at https://github.com/LidaSafety/fragbench.