DS1 spectrogram: EvoPool: Evolutionary Programmatic Annotation for Label-Efficient Specialized Supervision

EvoPool: Evolutionary Programmatic Annotation for Label-Efficient Specialized Supervision

2606.01617

Authors

Yaolun Zhang,Xuan Ouyang,Huazheng Wang,Tianyi Xu

Abstract

Large language models excel at general tasks but underperform smaller supervised models in specialized, high-stakes domains where training labels are costly. We address this regime with EvoPool, an evolutionary multi-agent framework inspired by Darwinian evolution.

Three specialized agents iteratively propose executable annotator code, a small validation set provides a fitness signal, and a deterministic gate keeps only annotators that pass viability, diversity, and marginal-contribution checks across generations. Pool votes are mapped to soft training labels by EvoAgg, a text-aware aggregator combining semantic features with annotator-vote features.

The authored pool runs at near-zero per-example cost and is 4500 to 31000x faster than LLM annotation on 100K examples. Across 7 of 8 LLM-weak specialized and complex tasks spanning biomedical relation extraction, legal-clause classification, complex reasoning, and dense multi-label biomedical classification, EvoPool beats the strongest LLM annotation baseline by an average +0.141 macro-F1, peaking at +0.301 on ChemProt and +0.265 on PubMed.

Code is available at: https://github.com/tianyi0216/EvoPool

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