cs.AI updates on arXiv.org 10月06日
神经算子学习机制研究
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本文对神经算子学习机制进行研究,将其分为空间域模型和功能域模型,并探讨其在数据驱动动力学模拟中的应用及物理规律学习,提出了一种预测解释方法,并指出其局限性,强调通用解释方法的重要性。

arXiv:2510.02683v1 Announce Type: cross Abstract: Recently, neural operators have emerged as powerful tools for learning mappings between function spaces, enabling data-driven simulations of complex dynamics. Despite their successes, a deeper understanding of their learning mechanisms remains underexplored. In this work, we classify neural operators into two types: (1) Spatial domain models that learn on grids and (2) Functional domain models that learn with function bases. We present several viewpoints based on this classification and focus on learning data-driven dynamics adhering to physical principles. Specifically, we provide a way to explain the prediction-making process of neural operators and show that neural operator can learn hidden physical patterns from data. However, this explanation method is limited to specific situations, highlighting the urgent need for generalizable explanation methods. Next, we show that a simple dual-space multi-scale model can achieve SOTA performance and we believe that dual-space multi-spatio-scale models hold significant potential to learn complex physics and require further investigation. Lastly, we discuss the critical need for principled frameworks to incorporate known physics into neural operators, enabling better generalization and uncovering more hidden physical phenomena.

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神经算子 学习机制 数据驱动 物理规律
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