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Meta-Sel: Efficient Demonstration Selection for In-Context Learning via Supervised Meta-Learning

Machine Learning 2026-02-13 v1 Artificial Intelligence Computation and Language

Abstract

Demonstration selection is a practical bottleneck in in-context learning (ICL): under a tight prompt budget, accuracy can change substantially depending on which few-shot examples are included, yet selection must remain cheap enough to run per query over large candidate pools. We propose Meta-Sel, a lightweight supervised meta-learning approach for intent classification that learns a fast, interpretable scoring function for (candidate, query) pairs from labeled training data. Meta-Sel constructs a meta-dataset by sampling pairs from the training split and using class agreement as supervision, then trains a calibrated logistic regressor on two inexpensive meta-features: TF--IDF cosine similarity and a length-compatibility ratio. At inference time, the selector performs a single vectorized scoring pass over the full candidate pool and returns the top-k demonstrations, requiring no model fine-tuning, no online exploration, and no additional LLM calls. This yields deterministic rankings and makes the selection mechanism straightforward to audit via interpretable feature weights. Beyond proposing Meta-Sel, we provide a broad empirical study of demonstration selection, benchmarking 12 methods -- spanning prompt engineering baselines, heuristic selection, reinforcement learning, and influence-based approaches -- across four intent datasets and five open-source LLMs. Across this benchmark, Meta-Sel consistently ranks among the top-performing methods, is particularly effective for smaller models where selection quality can partially compensate for limited model capacity, and maintains competitive selection-time overhead.

Keywords

Cite

@article{arxiv.2602.12123,
  title  = {Meta-Sel: Efficient Demonstration Selection for In-Context Learning via Supervised Meta-Learning},
  author = {Xubin Wang and Weijia Jia},
  journal= {arXiv preprint arXiv:2602.12123},
  year   = {2026}
}
R2 v1 2026-07-01T10:34:01.304Z