论文标题

基于分离节点识别的NISQ就绪的社区检测

NISQ-ready community detection based on separation-node identification

论文作者

Stein, Jonas, Ott, Dominik, Nüßlein, Jonas, Bucher, David, Schoenfeld, Mirco, Feld, Sebastian

论文摘要

网络结构的分析对于许多科学领域至关重要,从生物学到社会学。由于将这些网络聚集到分区中的计算任务,即解决社区检测问题,通常是NP-HARD,因此启发式解决方案是必不可少的。对权宜启发式方法的探索导致了新兴量子计算技术中特别有前途的方法的发展。以所有已建立的量子群落检测方法的大量硬件需求激励,我们引入了一种基于QUBO的新方法,该方法仅需要一些量子数,并且由Qubo-Matrix表示,就像输入图的邻接矩阵一样稀疏。通过新颖的分离节点概念实现了Qubo-Matrix的稀疏性的实质性改善。该方法没有将每个节点直接分配给一个社区,而是依赖于分离节点集的识别,该设置从图中删除后会产生一组连接的组件,代表了社区的核心组件。采用贪婪的启发式方法将分离节点集的节点分配给确定的社区核心,随后的实验结果产生了概念证明。因此,这项工作展示了一种有希望的方法,用于NISQ Ready量子社区检测,催化量子计算机在大规模,现实世界中问题实例的网络结构分析中的应用。

The analysis of network structure is essential to many scientific areas, ranging from biology to sociology. As the computational task of clustering these networks into partitions, i.e., solving the community detection problem, is generally NP-hard, heuristic solutions are indispensable. The exploration of expedient heuristics has led to the development of particularly promising approaches in the emerging technology of quantum computing. Motivated by the substantial hardware demands for all established quantum community detection approaches, we introduce a novel QUBO based approach that only needs number-of-nodes many qubits and is represented by a QUBO-matrix as sparse as the input graph's adjacency matrix. The substantial improvement on the sparsity of the QUBO-matrix, which is typically very dense in related work, is achieved through the novel concept of separation-nodes. Instead of assigning every node to a community directly, this approach relies on the identification of a separation-node set, which -- upon its removal from the graph -- yields a set of connected components, representing the core components of the communities. Employing a greedy heuristic to assign the nodes from the separation-node sets to the identified community cores, subsequent experimental results yield a proof of concept. This work hence displays a promising approach to NISQ ready quantum community detection, catalyzing the application of quantum computers for the network structure analysis of large scale, real world problem instances.

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