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The Propagation Field: A Geometric Substrate Theory of Deep Learning

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Modern deep learning treats neural networks primarily as endpoint functions from inputs to outputs. Inspired by the shift from force to geometry in physics, we ask whether a network should instead be understood through the geometry of its internal propagation. We define a neural propagation field as the collection of hidden-state trajectories and local Jacobian operators across depth. Endpoint losses constrain only the boundary behavior of this field, leaving its interior geometry underdetermined. We show that endpoint-equivalent models can differ by orders of magnitude in trajectory and Jacobian structure, and introduce observable field metrics such as path sensitivity, solver consistency, and trajectory/Jacobian retention. In controlled teacher-flow and PDE systems, endpoint fitting fails to recover the underlying propagation law. In real multi-path tasks, field-aware objectives improve unseen-path generalization, OOD robustness, and calibration when aligned with the observation structure, but can collapse when over-constrained. In continual learning, field-preservation regularization complements replay and distillation: on Split CIFAR-100, DER++ with field preservation improves average accuracy, backward transfer, and field-retention metrics. These results identify propagation-field quality as a measurable and trainable property of neural networks beyond endpoint performance.

Xingrui Gu• 2026

Related benchmarks

TaskDatasetResultRank
Continual LearningSplit CIFAR-100 20 tasks
Mean Test Accuracy3.82
62
Continual LearningCIFAR-100 Split
Average Accuracy (AA)13.6
10
ClassificationTiny-ImageNet (OOD)
Top-1 Accuracy12.8
10
Image ClassificationCIFAR-100
Average Accuracy5.58
3
Image ClassificationTiny-ImageNet
Accuracy (Avg)11.8
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Image ClassificationDigits
Average Accuracy52.61
3
Speech ClassificationSpeech
Average Accuracy18.66
3
Text ClassificationAG-News
Accuracy (Avg)28.04
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Text ClassificationSST-2
Average Accuracy55.72
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Drift Correlation AnalysisCIFAR-100 Split sequential 20 tasks--
3
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