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Main Authors: Lam, Phong, Nguyen, Ha-Linh, Nguyen, Thu-Trang, Nguyen, Son, Vo, Hieu Dinh
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2604.08578
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author Lam, Phong
Nguyen, Ha-Linh
Nguyen, Thu-Trang
Nguyen, Son
Vo, Hieu Dinh
author_facet Lam, Phong
Nguyen, Ha-Linh
Nguyen, Thu-Trang
Nguyen, Son
Vo, Hieu Dinh
contents High-quality labeled data is critical for training reliable machine learning and deep learning models, yet manual annotation remains costly and error-prone. Programmatic labeling addresses this challenge by using label functions (LFs), i.e., heuristic rules that automatically generate weak labels for training datasets. However, existing automated LF generation methods either rely on large language models (LLMs) to synthesize surface-level heuristics or employ model-based synthesis over hand-crafted primitives. These approaches often result in limited coverage and unreliable label quality. In this paper, we introduce EXPONA, an automated framework for programmatic labeling that formulates LF generation as a principled process balancing diversity and reliability. EXPONA systematically explores multi-level LFs, spanning surface, structural, and semantic perspectives. EXPONA further applies reliability-aware mechanisms to suppress noisy or redundant heuristics while preserving complementary signals. To evaluate EXPONA, we conducted extensive experiments on eleven classification datasets across diverse domains. Experimental results show that EXPONA consistently outperformed state-of-the-art automated LF generation methods. Specifically, EXPONA achieved nearly complete label coverage (up to 98.9%), improved weak label quality by up to 87%, and yielded downstream performance gains of up to 46% in weighted F1. These results indicate that EXPONA's combination of multi-level LF exploration and reliability-aware filtering enabled more consistent label quality and downstream performance across diverse tasks by balancing coverage and precision in the generated LF set.
format Preprint
id arxiv_https___arxiv_org_abs_2604_08578
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Structured Exploration and Exploitation of Label Functions for Automated Data Annotation
Lam, Phong
Nguyen, Ha-Linh
Nguyen, Thu-Trang
Nguyen, Son
Vo, Hieu Dinh
Machine Learning
Artificial Intelligence
High-quality labeled data is critical for training reliable machine learning and deep learning models, yet manual annotation remains costly and error-prone. Programmatic labeling addresses this challenge by using label functions (LFs), i.e., heuristic rules that automatically generate weak labels for training datasets. However, existing automated LF generation methods either rely on large language models (LLMs) to synthesize surface-level heuristics or employ model-based synthesis over hand-crafted primitives. These approaches often result in limited coverage and unreliable label quality. In this paper, we introduce EXPONA, an automated framework for programmatic labeling that formulates LF generation as a principled process balancing diversity and reliability. EXPONA systematically explores multi-level LFs, spanning surface, structural, and semantic perspectives. EXPONA further applies reliability-aware mechanisms to suppress noisy or redundant heuristics while preserving complementary signals. To evaluate EXPONA, we conducted extensive experiments on eleven classification datasets across diverse domains. Experimental results show that EXPONA consistently outperformed state-of-the-art automated LF generation methods. Specifically, EXPONA achieved nearly complete label coverage (up to 98.9%), improved weak label quality by up to 87%, and yielded downstream performance gains of up to 46% in weighted F1. These results indicate that EXPONA's combination of multi-level LF exploration and reliability-aware filtering enabled more consistent label quality and downstream performance across diverse tasks by balancing coverage and precision in the generated LF set.
title Structured Exploration and Exploitation of Label Functions for Automated Data Annotation
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2604.08578