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Statistical Mechanics of Deep Learning
Annual Review of Condensed Matter Physics ( IF 14.3 ) Pub Date : 2020-03-16 , DOI: 10.1146/annurev-conmatphys-031119-050745
Yasaman Bahri 1 , Jonathan Kadmon 2 , Jeffrey Pennington 1 , Sam S. Schoenholz 1 , Jascha Sohl-Dickstein 1 , Surya Ganguli 1, 2
Affiliation  

The recent striking success of deep neural networks in machine learning raises profound questions about the theoretical principles underlying their success. For example, what can such deep networks compute? How can we train them? How does information propagate through them? Why can they generalize? And how can we teach them to imagine? We review recent work in which methods of physical analysis rooted in statistical mechanics have begun to provide conceptual insights into these questions. These insights yield connections between deep learning and diverse physical and mathematical topics, including random landscapes, spin glasses, jamming, dynamical phase transitions, chaos, Riemannian geometry, random matrix theory, free probability, and nonequilibrium statistical mechanics. Indeed, the fields of statistical mechanics and machine learning have long enjoyed a rich history of strongly coupled interactions, and recent advances at the intersection of statistical mechanics and deep learning suggest these interactions will only deepen going forward.

中文翻译:


深度学习的统计力学

深度神经网络在机器学习中的最新惊人成功提出了有关其成功背后的理论原理的深刻问题。例如,这样的深度网络可以计算什么?我们如何训练他们?信息如何通过它们传播?他们为什么可以概括?我们如何教他们想象?我们回顾了最近的工作,其中基于统计力学的物理分析方法已经开始提供对这些问题的概念性见解。这些见解将深度学习与各种物理和数学主题联系起来,包括随机景观,旋转玻璃,干扰,动态相变,混沌,黎曼几何,随机矩阵理论,自由概率和非平衡统计力学。确实,

更新日期:2020-04-21
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