Understanding Generalization through Decision Pattern Shift
Huiqi Deng, Yibo Li, Quanshi Zhang, Peng Zhang, Hongbin Pei, Xia Hu

TL;DR
This paper introduces Decision Pattern Shift (DPS), a new internal metric based on GradCAM patterns, to analyze and quantify neural network generalization failures across various scenarios.
Contribution
It proposes a novel internal decision pattern representation and the DPS metric, revealing systematic decision drift correlating with generalization gaps.
Findings
Decision patterns are highly structured and class-consistent.
DPS magnitude correlates strongly with generalization gap (Pearson r > 0.8).
DPS spectrum organizes diverse failure scenarios into a continuous trajectory.
Abstract
Understanding why deep neural networks (DNNs) fail to generalize to unseen samples remains a long-standing challenge. Existing studies mainly examine changes in externally observable factors such as data, representations, or outputs, yet offer limited insight into how a model's internal decision mechanism evolves from training to test. To address this gap, we introduce Decision Pattern Shift (DPS), a new perspective that defines generalization through the stability of internal decision patterns and quantifies failure as their deviation from those learned during training. Specifically, we represent each sample's decision pattern as a GradCAM-based channel-contribution vector, which captures how feature channels collectively support a prediction, and we propose the DPS metric to measure its discrepancy from the class-average pattern. Empirical analyses across multiple datasets and…
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