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Chaos and complexity from quantum neural network. A study with diffusion metric in machine learning

机译:Quantum神经网络的混沌和复杂性。 机器学习中扩散度量的研究

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A bstract In this work, our prime objective is to study the phenomena of quantum chaos and complexity in the machine learning dynamics of Quantum Neural Network (QNN). A Parameterized Quantum Circuits (PQCs) in the hybrid quantum-classical framework is introduced as a universal function approximator to perform optimization with Stochastic Gradient Descent (SGD). We employ a statistical and differential geometric approach to study the learning theory of QNN. The evolution of parametrized unitary operators is correlated with the trajectory of parameters in the Diffusion metric. We establish the parametrized version of Quantum Complexity and Quantum Chaos in terms of physically relevant quantities, which are not only essential in determining the stability, but also essential in providing a very significant lower bound to the generalization capability of QNN. We explicitly prove that when the system executes limit cycles or oscillations in the phase space, the generalization capability of QNN is maximized. Finally, we have determined the generalization capability bound on the variance of parameters of the QNN in a steady state condition using Cauchy Schwartz Inequality.
机译:一个bstract在这项工作中,我们的主要目标是研究量子混沌和复杂的现象在量子神经网络(QNN)的机器学习动态。的参数化量子电路(PQCs)在混合量子经典框架被引入作为通用函数逼近与随机梯度下降(SGD)执行优化。我们采用统计和微分几何方法来研究量子神经网络的学习理论。参数化酉运营商的演进与在扩散指标参数的轨迹有关。我们在物理相关量,这不仅是在确定稳定性提供了非常显著下界QNN的泛化能力至关重要,同时也是基本的方面建立量子复杂性和量子混沌的参数化版本。我们明确地证明,当系统执行限制周期或振荡相空间,量子神经网络的泛化能力最大化。最后,我们已经确定的约束上的QNN的参数使用柯西不等式施瓦茨稳态条件下的方差泛化能力。

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