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Main Authors: Kim, Hee-Sung, Kim, Hyeonseong, Lee, Sungyoon
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.31324
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author Kim, Hee-Sung
Kim, Hyeonseong
Lee, Sungyoon
author_facet Kim, Hee-Sung
Kim, Hyeonseong
Lee, Sungyoon
contents Estimating the generalization gap and developing optimization methods that improve generalization are crucial for deep learning models, for both theoretical understanding and practical applications. Leveraging unlabeled data for these purposes offers significant advantages in real-world scenarios. This paper introduces a novel generalization measure, local inconsistency, derived from an information-geometric perspective on the parameter space of neural networks. A key feature of local inconsistency is that it can be computed without explicit labels. We establish theoretical underpinnings by connecting local inconsistency to the Fisher information matrix and the loss Hessian. Empirically, we demonstrate that local inconsistency correlates with the generalization gap. Based on these findings, we propose Inconsistency-Aware Minimization (IAM), which incorporates local inconsistency into the training objective. We demonstrate that in standard supervised learning settings, IAM enhances generalization, achieving performance comparable to that of existing methods such as Sharpness-Aware Minimization. Furthermore, IAM exhibits efficacy in semi- and self-supervised learning scenarios, where the local inconsistency is computed from unlabeled data.
format Preprint
id arxiv_https___arxiv_org_abs_2605_31324
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Inconsistency-Aware Minimization: Improving Generalization with Unlabeled Data
Kim, Hee-Sung
Kim, Hyeonseong
Lee, Sungyoon
Machine Learning
Artificial Intelligence
Estimating the generalization gap and developing optimization methods that improve generalization are crucial for deep learning models, for both theoretical understanding and practical applications. Leveraging unlabeled data for these purposes offers significant advantages in real-world scenarios. This paper introduces a novel generalization measure, local inconsistency, derived from an information-geometric perspective on the parameter space of neural networks. A key feature of local inconsistency is that it can be computed without explicit labels. We establish theoretical underpinnings by connecting local inconsistency to the Fisher information matrix and the loss Hessian. Empirically, we demonstrate that local inconsistency correlates with the generalization gap. Based on these findings, we propose Inconsistency-Aware Minimization (IAM), which incorporates local inconsistency into the training objective. We demonstrate that in standard supervised learning settings, IAM enhances generalization, achieving performance comparable to that of existing methods such as Sharpness-Aware Minimization. Furthermore, IAM exhibits efficacy in semi- and self-supervised learning scenarios, where the local inconsistency is computed from unlabeled data.
title Inconsistency-Aware Minimization: Improving Generalization with Unlabeled Data
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2605.31324