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Main Authors: Sun, Mingchun, Zhao, Rongqiang, Huang, Zhennan, Ding, Songyu, Liu, Jie
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2602.15878
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author Sun, Mingchun
Zhao, Rongqiang
Huang, Zhennan
Ding, Songyu
Liu, Jie
author_facet Sun, Mingchun
Zhao, Rongqiang
Huang, Zhennan
Ding, Songyu
Liu, Jie
contents In industrial scenarios, data augmentation is an effective approach to improve model performance. However, its benefits are not unidirectionally beneficial. There is no theoretical research or established estimation for the optimal sample size (OSS) in augmentation, nor is there an established metric to evaluate the accuracy of OSS or its deviation from the ground truth. To address these issues, we propose an information-theoretic optimal sample size estimation (IT-OSE) to provide reliable OSS estimation for industrial data augmentation. An interval coverage and deviation (ICD) score is proposed to evaluate the estimated OSS intuitively. The relationship between OSS and dominant factors is theoretically analyzed and formulated, thereby enhancing the interpretability. Experiments show that, compared to empirical estimation, the IT-OSE increases accuracy in classification tasks across baseline models by an average of 4.38%, and reduces MAPE in regression tasks across baseline models by an average of 18.80%. The improvements in downstream model performance are more stable. ICDdev in the ICD score is also reduced by an average of 49.30%. The determinism of OSS is enhanced. Compared to exhaustive search, the IT-OSE achieves the same OSS while reducing computational and data costs by an average of 83.97% and 93.46%. Furthermore, practicality experiments demonstrate that the IT-OSE exhibits generality across representative sensor-based industrial scenarios.
format Preprint
id arxiv_https___arxiv_org_abs_2602_15878
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle IT-OSE: Exploring Optimal Sample Size for Industrial Data Augmentation
Sun, Mingchun
Zhao, Rongqiang
Huang, Zhennan
Ding, Songyu
Liu, Jie
Machine Learning
Artificial Intelligence
In industrial scenarios, data augmentation is an effective approach to improve model performance. However, its benefits are not unidirectionally beneficial. There is no theoretical research or established estimation for the optimal sample size (OSS) in augmentation, nor is there an established metric to evaluate the accuracy of OSS or its deviation from the ground truth. To address these issues, we propose an information-theoretic optimal sample size estimation (IT-OSE) to provide reliable OSS estimation for industrial data augmentation. An interval coverage and deviation (ICD) score is proposed to evaluate the estimated OSS intuitively. The relationship between OSS and dominant factors is theoretically analyzed and formulated, thereby enhancing the interpretability. Experiments show that, compared to empirical estimation, the IT-OSE increases accuracy in classification tasks across baseline models by an average of 4.38%, and reduces MAPE in regression tasks across baseline models by an average of 18.80%. The improvements in downstream model performance are more stable. ICDdev in the ICD score is also reduced by an average of 49.30%. The determinism of OSS is enhanced. Compared to exhaustive search, the IT-OSE achieves the same OSS while reducing computational and data costs by an average of 83.97% and 93.46%. Furthermore, practicality experiments demonstrate that the IT-OSE exhibits generality across representative sensor-based industrial scenarios.
title IT-OSE: Exploring Optimal Sample Size for Industrial Data Augmentation
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2602.15878