CLAIMar 27, 2025

Collab: Controlled Decoding using Mixture of Agents for LLM Alignment

arXiv:2503.21720v119 citationsh-index: 19Has CodeICLR
Originality Incremental advance
AI Analysis

This addresses the computational cost of RLHF for LLM alignment by enabling efficient inference-time adaptation, though it builds incrementally on existing controlled decoding approaches.

The paper tackles the problem of aligning large language models at inference time without expensive retraining by proposing a mixture of agent-based decoding strategy that dynamically selects the most suitable LLM for each token. The method achieves up to 1.56x improvement in average reward and 71.89% GPT-4 win-tie rate compared to single-agent baselines.

Alignment of Large Language models (LLMs) is crucial for safe and trustworthy deployment in applications. Reinforcement learning from human feedback (RLHF) has emerged as an effective technique to align LLMs to human preferences and broader utilities, but it requires updating billions of model parameters, which is computationally expensive. Controlled Decoding, by contrast, provides a mechanism for aligning a model at inference time without retraining. However, single-agent decoding approaches often struggle to adapt to diverse tasks due to the complexity and variability inherent in these tasks. To strengthen the test-time performance w.r.t the target task, we propose a mixture of agent-based decoding strategies leveraging the existing off-the-shelf aligned LLM policies. Treating each prior policy as an agent in the spirit of mixture of agent collaboration, we develop a decoding method that allows for inference-time alignment through a token-level selection strategy among multiple agents. For each token, the most suitable LLM is dynamically chosen from a pool of models based on a long-term utility metric. This policy-switching mechanism ensures optimal model selection at each step, enabling efficient collaboration and alignment among LLMs during decoding. Theoretical analysis of our proposed algorithm establishes optimal performance with respect to the target task represented via a target reward for the given off-the-shelf models. We conduct comprehensive empirical evaluations with open-source aligned models on diverse tasks and preferences, which demonstrates the merits of this approach over single-agent decoding baselines. Notably, Collab surpasses the current SoTA decoding strategy, achieving an improvement of up to 1.56x in average reward and 71.89% in GPT-4 based win-tie rate.

Foundations

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