Epistemic Uncertainty for Test-Time Discovery

arXiv:2605.11328v1 Announce Type: cross Abstract: Automated scientific discovery using large language models relies on identifying genuinely novel solutions. Standard reinforcement learning penalizes high-variance mutations, which

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  • The Granularity Mismatch in Agent Security: Argument-Level Provenance Solves Enforcement and Isolates the LLM Reasoning Bottleneck

arXiv:2605.11039v1 Announce Type: cross
Abstract: Tool-using LLM agents must act on untrusted webpages, emails, files, and API outputs while issuing privileged tool calls. Existing defenses often mediate trust at the granularity of an entire tool invocation, forcing a brittle choice in mixed-trust workflows: allow external content to influence a call and risk hijacked destinations or commands, or quarantine the call and block benign retrieval-then-act behavior. The key observation behind this paper is that indirect prompt injection becomes dangerous not when untrusted content appears in context, but when it determines an authority-bearing argument. We present textscPACT (emphProvenance-Aware Capability Contracts), a runtime monitor that assigns semantic roles to tool arguments, tracks value provenance across replanning steps, and checks whether each argument’s origin satisfies its role-specific trust contract. Under oracle provenance, textscPACT achieves 100% utility and 100% security on mixed-trust diagnostic suites, while flat invocation-level monitors incur false positives or false negatives. In full AgentDojo deployments across five models, textscPACT reaches 100% security on the three strongest models while recovering 38.1–46.4% utility, 8–16 percentage points above CaMeL at the same security level. Ablations show that both semantic roles and cross-step provenance are necessary. textscPACT reframes agent security as authority binding, and isolates the remaining deployment bottleneck to provenance inference and contract synthesis.

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