STRIDE: Strategic Iterative Decision-Making for Retrieval-Augmented Multi-Hop Question Answering
arXiv cs.AI / 4/21/2026
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Key Points
- STRIDE addresses limitations of current multi-hop question answering systems by separating strategic planning, dynamic control, and grounded execution rather than using a single iterative retrieval-augmented generation loop.
- It builds an entity-agnostic “reasoning skeleton” first via a Meta-Planner, delaying entity grounding to reduce errors from lexical ambiguity and premature entity commitment.
- A Supervisor coordinates sub-question execution with awareness of logical dependencies, enabling parallelization when possible and coordinated sequencing when required.
- STRIDE dynamically decides between retrieving new evidence or inferring from existing facts, reducing redundant queries and limiting error propagation through cross-branch information fusion and failed-query reformulation.
- The paper introduces STRIDE-FT, a fine-tuning framework that leverages self-generated execution trajectories to improve open-source LLMs without human annotations or stronger teacher models.
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