博弈论在神经网络中的应用

A. Schuster, Y. Yamaguchi
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引用次数: 10

摘要

本文从理论上探讨了博弈论概念在神经网络(自然的和人工的)中的潜在应用。这篇论文依赖于基本模型,但研究结果在本质上更为普遍,因此应该适用于更复杂的环境。本文的一个主要成果是基于博弈论的配对神经元系统的学习算法。
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Application of Game Theory to Neuronal Networks
The paper is a theoretical investigation into the potential application of game theoretic concepts to neural networks (natural and artificial). The paper relies on basic models but the findings are more general in nature and therefore should apply to more complex environments. A major outcome of the paper is a learning algorithm based on game theory for a paired neuron system.
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