论文标题

关于复杂网络的量子模拟

On the quantum simulation of complex networks

论文作者

Magano, Duarte, Moutinho, João, Coutinho, Bruno

论文摘要

量子步行提供了一个自然的框架,可以使用量子计算机来解决图形问题,在其经典的对应物上展示了诸如搜索标记节点或缺失链接的预测之类的任务。连续时间量子步行算法假设我们可以模拟量子系统的动力学,在该量子系统中,该图由图形的邻接矩阵给出。众所周知,如果底层图是行 - 平板且有效地反复计算的,则可以有效地模拟这样的模拟。尽管这对于许多应用程序来说足够了,但它限制了该类别的算法研究现实世界复杂网络的适用性,而现实世界中的复杂网络除其他属性中的特征是存在一些密集连接的节点,称为HUB。换句话说,即使所有节点上的平均连接性都很小,复杂的网络通常不是排-sparse。在这项工作中,我们将量子模拟的最新结果扩展到包含少量集线器但否则稀疏的图表。希望我们的结果可能会导致量子计算对网络科学的新应用。

Quantum walks provide a natural framework to approach graph problems with quantum computers, exhibiting speedups over their classical counterparts for tasks such as the search for marked nodes or the prediction of missing links. Continuous-time quantum walk algorithms assume that we can simulate the dynamics of quantum systems where the Hamiltonian is given by the adjacency matrix of the graph. It is known that such can be simulated efficiently if the underlying graph is row-sparse and efficiently row-computable. While this is sufficient for many applications, it limits the applicability for this class of algorithms to study real world complex networks, which, among other properties, are characterized by the existence of a few densely connected nodes, called hubs. In other words, complex networks are typically not row-sparse, even though the average connectivity over all nodes can be very small. In this work, we extend the state-of-the-art results on quantum simulation to graphs that contain a small number of hubs, but that are otherwise sparse. Hopefully, our results may lead to new applications of quantum computing to network science.

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