论文标题
加权网络形式对量子极端储层计算的影响
Impact of the form of weighted networks on the quantum extreme reservoir computation
论文作者
论文摘要
量子极端储层计算(QERC)是一种多功能的量子神经网络模型,将极端机器学习的概念与量子储层计算相结合。 QERC的关键是生成复杂的量子储存库(特征空间),该储层不需要针对不同的问题实例进行优化。最初,使用定期驱动的系统汉密尔顿动力学作为量子特征图。在这项工作中,我们捕获了如何通过一种方法来表征加权网络形式表征单一矩阵的方法增加量子特征图的生成。此外,为了确定足够生长的特征图的关键属性,我们使用各种加权网络模型对其进行评估,这些网络模型可用于图像分类情况下的量子储层。最后,我们展示了一个简单的哈密顿模型基于无序离散时间晶体,其简单的实现路线如何提供几乎最佳的性能,同时逐渐消除量子处理器的编程必要性。
The quantum extreme reservoir computation (QERC) is a versatile quantum neural network model that combines the concepts of extreme machine learning with quantum reservoir computation. Key to QERC is the generation of a complex quantum reservoir (feature space) that does not need to be optimized for different problem instances. Originally, a periodically-driven system Hamiltonian dynamics was employed as the quantum feature map. In this work we capture how the quantum feature map is generated as the number of time-steps of the dynamics increases by a method to characterize unitary matrices in the form of weighted networks. Furthermore, to identify the key properties of the feature map that has sufficiently grown, we evaluate it with various weighted network models that could be used for the quantum reservoir in image classification situations. At last, we show how a simple Hamiltonian model based on a disordered discrete time crystal with its simple implementation route provides nearly-optimal performance while removing the necessity of programming of the quantum processor gate by gate.