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arXiv 提交日期: 2026-04-23
📄 Abstract - There Will Be a Scientific Theory of Deep Learning

In this paper, we make the case that a scientific theory of deep learning is emerging. By this we mean a theory which characterizes important properties and statistics of the training process, hidden representations, final weights, and performance of neural networks. We pull together major strands of ongoing research in deep learning theory and identify five growing bodies of work that point toward such a theory: (a) solvable idealized settings that provide intuition for learning dynamics in realistic systems; (b) tractable limits that reveal insights into fundamental learning phenomena; (c) simple mathematical laws that capture important macroscopic observables; (d) theories of hyperparameters that disentangle them from the rest of the training process, leaving simpler systems behind; and (e) universal behaviors shared across systems and settings which clarify which phenomena call for explanation. Taken together, these bodies of work share certain broad traits: they are concerned with the dynamics of the training process; they primarily seek to describe coarse aggregate statistics; and they emphasize falsifiable quantitative predictions. We argue that the emerging theory is best thought of as a mechanics of the learning process, and suggest the name learning mechanics. We discuss the relationship between this mechanics perspective and other approaches for building a theory of deep learning, including the statistical and information-theoretic perspectives. In particular, we anticipate a symbiotic relationship between learning mechanics and mechanistic interpretability. We also review and address common arguments that fundamental theory will not be possible or is not important. We conclude with a portrait of important open directions in learning mechanics and advice for beginners. We host further introductory materials, perspectives, and open questions at this http URL.

顶级标签: machine learning theory
详细标签: deep learning theory learning mechanics training dynamics universal behaviors falsifiable predictions 或 搜索:

深度学习将拥有一套科学理论 / There Will Be a Scientific Theory of Deep Learning


1️⃣ 一句话总结

本文提出深度学习的科学理论正在形成,并总结了五个关键研究方向——可解的理想化模型、可处理的极限情况、简单的数学定律、超参数理论以及跨系统通用行为——这些研究共同构成了描述学习过程的“学习力学”,旨在用可验证的定量预测来揭示神经网络的训练动态、隐藏表征和最终性能。

源自 arXiv: 2604.21691