CLAIMay 28, 2025

Text2Grad: Reinforcement Learning from Natural Language Feedback

arXiv:2505.22338v112 citationsh-index: 22Has Code
Originality Incremental advance
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This addresses the issue of slow and opaque learning in RLHF for language models by enabling fine-grained, interpretable adjustments, though it is an incremental improvement over existing methods.

The paper tackles the problem of reinforcement learning from human feedback (RLHF) by converting free-form textual critiques into span-level gradients for precise policy optimization, achieving higher task metrics across summarization, code generation, and question answering compared to scalar-reward RL and prompt-only baselines.

Traditional RLHF optimizes language models with coarse, scalar rewards that mask the fine-grained reasons behind success or failure, leading to slow and opaque learning. Recent work augments RL with textual critiques through prompting or reflection, improving interpretability but leaving model parameters untouched. We introduce Text2Grad, a reinforcement-learning paradigm that turns free-form textual feedback into span-level gradients. Given human (or programmatic) critiques, Text2Grad aligns each feedback phrase with the relevant token spans, converts these alignments into differentiable reward signals, and performs gradient updates that directly refine the offending portions of the model's policy. This yields precise, feedback-conditioned adjustments instead of global nudges. Text2Grad is realized through three components: (1) a high-quality feedback-annotation pipeline that pairs critiques with token spans; (2) a fine-grained reward model that predicts span-level reward on answer while generating explanatory critiques; and (3) a span-level policy optimizer that back-propagates natural-language gradients. Across summarization, code generation, and question answering, Text2Grad consistently surpasses scalar-reward RL and prompt-only baselines, providing both higher task metrics and richer interpretability. Our results demonstrate that natural-language feedback, when converted to gradients, is a powerful signal for fine-grained policy optimization. The code for our method is available at https://github.com/microsoft/Text2Grad

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