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Route to Rome Attack: Directing LLM Routers to Expensive Models via Adversarial Suffix Optimization

2026-04-16 13:51:48
Haochun Tang, Yuliang Yan, Jiahua Lu, Huaxiao Liu, Enyan Dai

Abstract

Cost-aware routing dynamically dispatches user queries to models of varying capability to balance performance and inference cost. However, the routing strategy introduces a new security concern that adversaries may manipulate the router to consistently select expensive high-capability models. Existing routing attacks depend on either white-box access or heuristic prompts, rendering them ineffective in real-world black-box scenarios. In this work, we propose R$^2$A, which aims to mislead black-box LLM routers to expensive models via adversarial suffix optimization. Specifically, R$^2$A deploys a hybrid ensemble surrogate router to mimic the black-box router. A suffix optimization algorithm is further adapted for the ensemble-based surrogate. Extensive experiments on multiple open-source and commercial routing systems demonstrate that {R$^2$A} significantly increases the routing rate to expensive models on queries of different distributions. Code and examples: this https URL.

Abstract (translated)

URL

https://arxiv.org/abs/2604.15022

PDF

https://arxiv.org/pdf/2604.15022.pdf


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