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Main Authors: Chen, Zihan, Shi, Lei, Wu, Weize, Zhou, Qiji, Zhang, Yue
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2509.07512
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author Chen, Zihan
Shi, Lei
Wu, Weize
Zhou, Qiji
Zhang, Yue
author_facet Chen, Zihan
Shi, Lei
Wu, Weize
Zhou, Qiji
Zhang, Yue
contents Many contemporary data-driven research efforts in the natural sciences, such as chemistry and materials science, require large-scale, high-performance entity recognition from scientific datasets. Large language models (LLMs) have increasingly been adopted to solve the entity recognition task, with the same trend being observed on all-spectrum NLP tasks. The prevailing entity recognition LLMs rely on fine-tuned technology, yet the fine-tuning process often incurs significant cost. To achieve a best performance-cost trade-off, we propose ALLabel, a three-stage framework designed to select the most informative and representative samples in preparing the demonstrations for LLM modeling. The annotated examples are used to construct a ground-truth retrieval corpus for LLM in-context learning. By sequentially employing three distinct active learning strategies, ALLabel consistently outperforms all baselines under the same annotation budget across three specialized domain datasets. Experimental results also demonstrate that selectively annotating only 5\%-10\% of the dataset with ALLabel can achieve performance comparable to the method annotating the entire dataset. Further analyses and ablation studies verify the effectiveness and generalizability of our proposal.
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publishDate 2025
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spellingShingle ALLabel: Three-stage Active Learning for LLM-based Entity Recognition using Demonstration Retrieval
Chen, Zihan
Shi, Lei
Wu, Weize
Zhou, Qiji
Zhang, Yue
Computation and Language
Artificial Intelligence
Information Retrieval
Many contemporary data-driven research efforts in the natural sciences, such as chemistry and materials science, require large-scale, high-performance entity recognition from scientific datasets. Large language models (LLMs) have increasingly been adopted to solve the entity recognition task, with the same trend being observed on all-spectrum NLP tasks. The prevailing entity recognition LLMs rely on fine-tuned technology, yet the fine-tuning process often incurs significant cost. To achieve a best performance-cost trade-off, we propose ALLabel, a three-stage framework designed to select the most informative and representative samples in preparing the demonstrations for LLM modeling. The annotated examples are used to construct a ground-truth retrieval corpus for LLM in-context learning. By sequentially employing three distinct active learning strategies, ALLabel consistently outperforms all baselines under the same annotation budget across three specialized domain datasets. Experimental results also demonstrate that selectively annotating only 5\%-10\% of the dataset with ALLabel can achieve performance comparable to the method annotating the entire dataset. Further analyses and ablation studies verify the effectiveness and generalizability of our proposal.
title ALLabel: Three-stage Active Learning for LLM-based Entity Recognition using Demonstration Retrieval
topic Computation and Language
Artificial Intelligence
Information Retrieval
url https://arxiv.org/abs/2509.07512