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Main Authors: Li, Guozheng, Wang, Ao, Wang, Shaoxiang, Zhang, Yu, Cao, Pengcheng, Bai, Yang, Liu, Chi Harold
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2602.14102
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author Li, Guozheng
Wang, Ao
Wang, Shaoxiang
Zhang, Yu
Cao, Pengcheng
Bai, Yang
Liu, Chi Harold
author_facet Li, Guozheng
Wang, Ao
Wang, Shaoxiang
Zhang, Yu
Cao, Pengcheng
Bai, Yang
Liu, Chi Harold
contents Deep learning models for natural language processing rely heavily on high-quality labeled datasets. However, existing labeling approaches often struggle to balance label quality with labeling cost. To address this challenge, we propose DALL, a text labeling framework that integrates data programming, active learning, and large language models. DALL introduces a structured specification that allows users and large language models to define labeling functions via configuration, rather than code. Active learning identifies informative instances for review, and the large language model analyzes these instances to help users correct labels and to refine or suggest labeling functions. We implement DALL as an interactive labeling system for text labeling tasks. Comparative, ablation, and usability studies demonstrate DALL's efficiency, the effectiveness of its modules, and its usability.
format Preprint
id arxiv_https___arxiv_org_abs_2602_14102
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle DALL: Data Labeling via Data Programming and Active Learning Enhanced by Large Language Models
Li, Guozheng
Wang, Ao
Wang, Shaoxiang
Zhang, Yu
Cao, Pengcheng
Bai, Yang
Liu, Chi Harold
Human-Computer Interaction
Deep learning models for natural language processing rely heavily on high-quality labeled datasets. However, existing labeling approaches often struggle to balance label quality with labeling cost. To address this challenge, we propose DALL, a text labeling framework that integrates data programming, active learning, and large language models. DALL introduces a structured specification that allows users and large language models to define labeling functions via configuration, rather than code. Active learning identifies informative instances for review, and the large language model analyzes these instances to help users correct labels and to refine or suggest labeling functions. We implement DALL as an interactive labeling system for text labeling tasks. Comparative, ablation, and usability studies demonstrate DALL's efficiency, the effectiveness of its modules, and its usability.
title DALL: Data Labeling via Data Programming and Active Learning Enhanced by Large Language Models
topic Human-Computer Interaction
url https://arxiv.org/abs/2602.14102