从现代生产质量神经网络中发现知识的统计力学方法

Charles H. Martin, Michael W. Mahoney
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引用次数: 3

摘要

统计力学和神经网络之间的联系由来已久,但近几十年来,这种联系已经消失了。然而,鉴于最近统计学习理论和随机优化理论在描述(甚至定性)生产质量神经网络模型的许多特性方面的失败,研究人员重新审视了神经网络统计力学的思想。本教程将提供该领域的概述;它将详细介绍与随机矩阵理论和重尾随机矩阵理论的联系如何导致大规模深度神经网络的实用现象学理论;它将描述未来的发展方向。
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Statistical Mechanics Methods for Discovering Knowledge from Modern Production Quality Neural Networks
There have long been connections between statistical mechanics and neural networks, but in recent decades these connections have withered. However, in light of recent failings of statistical learning theory and stochastic optimization theory to describe, even qualitatively, many properties of production-quality neural network models, researchers have revisited ideas from the statistical mechanics of neural networks. This tutorial will provide an overview of the area; it will go into detail on how connections with random matrix theory and heavy-tailed random matrix theory can lead to a practical phenomenological theory for large-scale deep neural networks; and it will describe future directions.
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