S^3-R1: Learning to Retrieve and Answer Step-by-Step with Synthetic Data
For researchers working on RL-based tool-use and question-answering, this framework provides a data-centric approach to improve search and synthesis strategies, though the gains are incremental.
S^3-R1 addresses the challenge of sparse outcome-based rewards and lack of diverse training data for reinforcement learning in agentic tool-use for question-answering. By introducing a synthetic data generation pipeline and a denser reward structure, the method achieves up to a 10% improvement in robust generalization on out-of-domain datasets.
Reinforcement learning (RL) post-training has enabled newer capabilities in models, such as agentic tool-use for search. However, these models struggle primarily due to limitations with sparse outcome-based rewards and a lack of training data that encapsulates questions of differing hardness, which results in models not performing deeper searches with tools to collect evidence for question-answering. To address these limitations, we introduce S^3-R1 (Synthetic data and stabilized Search R1), a framework that couples a data-centric approach with denser learning signals. We first develop a synthetic generation and curation pipeline that programmatically derives diverse, multi-hop questions from existing documents. This pipeline incorporates a retrieval-based verification step to specifically isolate questions of intermediate difficulty. We then pair this expanded training set with a reward structure that evaluates both intermediate search quality and the correctness of the final answer. This setup directly mitigates the credit assignment problems inherent to sparse rewards. Our evaluations show that S^3-R1 outperforms existing baselines by learning more effective search and synthesis strategies, yielding up to a 10% improvement in robust generalization on out-of-domain datasets.