CLSep 27, 2025

Test-Time Policy Adaptation for Enhanced Multi-Turn Interactions with LLMs

arXiv:2509.23166v13 citationsh-index: 3
Originality Highly original
AI Analysis

This addresses a key limitation for users of LLMs in extended conversations, offering an incremental but practical enhancement to interaction quality.

The paper tackles the problem of LLM performance degradation in multi-turn interactions by proposing Test-Time Policy Adaptation (T2PAM) and the ROSA algorithm, which uses real-time user feedback to update model parameters, resulting in significant improvements in task effectiveness and efficiency as demonstrated in experiments.

Large Language Models (LLMs) employ multi-turn interaction as a fundamental paradigm for completing complex tasks. However, their performance often degrades in extended interactions, as they are typically trained on static, single-turn data, which hinders their ability to adapt to real-time user feedback. To address this limitation, we first propose a new paradigm: Test-Time Policy Adaptation for Multi-Turn Interactions (T2PAM), which utilizes user feedback from the ongoing interaction as a reward signal to estimate a latent optimal policy aligned with user preferences, then updates a small subset of parameters to steer the model toward this policy, ultimately enabling efficient in-conversation self-correction. We then introduce Optimum-Referenced One-Step Adaptation (ROSA), a lightweight algorithm that operationalizes T2PAM. ROSA guides the model parameters toward a theoretical optimal policy in a single, efficient update step, avoiding costly iterative gradient-based optimization and minimizing computational overhead. We provide a rigorous theoretical analysis guaranteeing that the policy of ROSA converges to the preference of user as the number of interactions increases. Extensive experiments on challenging benchmark demonstrate that ROSA achieves significant improvements in both task effectiveness and efficiency.

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