English

ReSearch: A Multi-Stage Machine Learning Framework for Earth Science Data Discovery

Databases 2026-03-03 v2 Information Retrieval

Abstract

The rapid expansion of Earth Science data from satellite observations, reanalysis products, and numerical simulations has created a critical bottleneck in scientific discovery, namely identifying relevant datasets for a given research objective. Existing discovery systems are primarily retrieval-centric and struggle to bridge the gap between high-level scientific intent and heterogeneous metadata at scale. We introduce \textbf{ReSearch}, a multi-stage, reasoning-enhanced search framework that formulates Earth Science data discovery as an iterative process of intent interpretation, high-recall retrieval, and context-aware ranking. ReSearch integrates lexical search, semantic embeddings, abbreviation expansion, and large language model reranking within a unified architecture that explicitly separates recall and precision objectives. To enable realistic evaluation, we construct a literature-grounded benchmark by aligning natural language intent with datasets cited in peer-reviewed Earth Science studies. Experiments demonstrate that ReSearch consistently improves recall and ranking performance over baseline methods, particularly for task-based queries expressing abstract scientific goals. These results demonstrate the importance of intent-aware, multi-stage search as a foundational capability for reproducible and scalable Earth Science research.

Keywords

Cite

@article{arxiv.2601.14176,
  title  = {ReSearch: A Multi-Stage Machine Learning Framework for Earth Science Data Discovery},
  author = {Youran Sun and Yixin Wen and Haizhao Yang},
  journal= {arXiv preprint arXiv:2601.14176},
  year   = {2026}
}
R2 v1 2026-07-01T09:12:47.854Z