English

Efficient, Property-Aligned Fan-Out Retrieval via RL-Compiled Diffusion

Information Retrieval 2026-03-09 v1 Machine Learning

Abstract

Many modern retrieval problems are set-valued: given a broad intent, the system must return a collection of results that optimizes higher-order properties (e.g., diversity, coverage, complementarity, coherence) while remaining grounded with respect to a fixed database. Set-valued objectives are typically non-decomposable and are not captured by existing supervised (query, content) datasets which only prioritize top-1 retrieval. Consequently, fan-out retrieval is often employed to generate diverse subqueries to retrieve item sets. While reinforcement learning (RL) can optimize set-level objectives via interaction, deploying an RL-tuned LLM for fan-out retrieval is prohibitively expensive at inference time. Conversely, diffusion-based generative retrieval enables efficient single-pass fan-out in embedding space, but requires objective-aligned training targets. To address these issues, we propose R4T (Retrieve-for-Train), which uses RL once as an objective transducer in a three-step process: (i) train a fan-out LLM with composite set-level rewards, (ii) synthesize objective-consistent training pairs, and (iii) train a lightweight diffusion retriever to model the conditional distribution of set-valued outputs. Across large-scale fashion and music benchmarks consisting of curated item sets, we show that R4T improves retrieval quality relative to strong baselines while reducing query-time fan-out latency by an order of magnitude.

Keywords

Cite

@article{arxiv.2603.06397,
  title  = {Efficient, Property-Aligned Fan-Out Retrieval via RL-Compiled Diffusion},
  author = {Pengcheng Jiang and Judith Yue Li and Moonkyung Ryu and R. Lily Hu and Kun Su and Zhong Yi Wan and Liam Hebert and Hao Peng and Jiawei Han and Dima Kuzmin and Craig Boutilier},
  journal= {arXiv preprint arXiv:2603.06397},
  year   = {2026}
}
R2 v1 2026-07-01T11:07:07.148Z