Deep Neural Networks miss a principled model of their operation. A novel framework for supervised learning based on Topological Quantum Field Theory that looks particularly well suited for implementation on quantum processors has been recently explored. We propose the use of this framework for understanding the problem of generalization in Deep Neural Networks. More specifically, in this approach Deep Neural Networks are viewed as the semi-classical limit of Topological Quantum Neural Networks. A framework of this kind explains easily the overfitting behavior of Deep Neural Networks during the training step and the corresponding generalization capabilities.
翻译:深神经网络错过了它们运作的原则模式。 基于地形量子场理论的监督下学习的新框架似乎特别适合于量子处理器的实施。 我们提议使用这个框架来理解深神经网络的普遍化问题。 更具体地说,在这个方法中,深神经网络被视为地形量子神经网络的半古典界限。 这种框架很容易解释深神经网络在培训步骤期间的过度行为和相应的一般化能力。