Attack HIGH relevance

Peak + Accumulation: A Proxy-Level Scoring Formula for Multi-Turn LLM Attack Detection

J Alex Corll
Published
February 11, 2026
Updated
March 5, 2026

Abstract

Multi-turn prompt injection attacks distribute malicious intent across multiple conversation turns, exploiting the assumption that each turn is evaluated independently. While single-turn detection has been extensively studied, no published formula exists for aggregating per-turn pattern scores into a conversation-level risk score at the proxy layer -- without invoking an LLM. We identify a fundamental flaw in the intuitive weighted-average approach: it converges to the per-turn score regardless of turn count, meaning a 20-turn persistent attack scores identically to a single suspicious turn. Drawing on analogies from change-point detection (CUSUM), Bayesian belief updating, and security risk-based alerting, we propose peak + accumulation scoring -- a formula combining peak single-turn risk, persistence ratio, and category diversity. Evaluated on 10,654 multi-turn conversations -- 588 attacks sourced from WildJailbreak adversarial prompts and 10,066 benign conversations from WildChat -- the formula achieves 90.8% recall at 1.20% false positive rate with an F1 of 85.9%. A sensitivity analysis over the persistence parameter reveals a phase transition at rho ~ 0.4, where recall jumps 12 percentage points with negligible FPR increase. We release the scoring algorithm, pattern library, and evaluation harness as open source.

Pro Analysis

Full threat analysis, ATLAS technique mapping, compliance impact assessment (ISO 42001, EU AI Act), and actionable recommendations are available with a Pro subscription.

Threat Deep-Dive
ATLAS Mapping
Compliance Reports
Actionable Recommendations
Start 14-Day Free Trial