English

Memo-SQL: Structured Decomposition and Experience-Driven Self-Correction for Training-Free NL2SQL

Artificial Intelligence 2026-01-16 v1

Abstract

Existing NL2SQL systems face two critical limitations: (1) they rely on in-context learning with only correct examples, overlooking the rich signal in historical error-fix pairs that could guide more robust self-correction; and (2) test-time scaling approaches often decompose questions arbitrarily, producing near-identical SQL candidates across runs and diminishing ensemble gains. Moreover, these methods suffer from a stark accuracy-efficiency trade-off: high performance demands excessive computation, while fast variants compromise quality. We present Memo-SQL, a training-free framework that addresses these issues through two simple ideas: structured decomposition and experience-aware self-correction. Instead of leaving decomposition to chance, we apply three clear strategies, entity-wise, hierarchical, and atomic sequential, to encourage diverse reasoning. For correction, we build a dynamic memory of both successful queries and historical error-fix pairs, and use retrieval-augmented prompting to bring relevant examples into context at inference time, no fine-tuning or external APIs required. On BIRD, Memo-SQL achieves 68.5% execution accuracy, setting a new state of the art among open, zero-fine-tuning methods, while using over 10 times fewer resources than prior TTS approaches.

Keywords

Cite

@article{arxiv.2601.10011,
  title  = {Memo-SQL: Structured Decomposition and Experience-Driven Self-Correction for Training-Free NL2SQL},
  author = {Zerui Yang and Weichuan Wang and Yanwei Xu and Linqi Song and Yudai Matsuda and Wei Han and Bo Bai},
  journal= {arXiv preprint arXiv:2601.10011},
  year   = {2026}
}
R2 v1 2026-07-01T09:05:11.825Z