Quantum Motif Clustering

11/25/2021
by   Chris Cade, et al.
0

We present three quantum algorithms for clustering graphs based on higher-order patterns, known as motif clustering. One uses a straightforward application of Grover search, the other two make use of quantum approximate counting, and all of them obtain square-root like speedups over the fastest classical algorithms in various settings. In order to use approximate counting in the context of clustering, we show that for general weighted graphs the performance of spectral clustering is mostly left unchanged by the presence of constant (relative) errors on the edge weights. Finally, we extend the original analysis of motif clustering in order to better understand the role of multiple `anchor nodes' in motifs and the types of relationships that this method of clustering can and cannot capture.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
09/23/2020

Higher-Order Spectral Clustering for Geometric Graphs

The present paper is devoted to clustering geometric graphs. While the s...
research
04/02/2020

Motif-Based Spectral Clustering of Weighted Directed Networks

Clustering is an essential technique for network analysis, with applicat...
research
04/06/2022

Quantum Approximate Counting for Markov Chains and Application to Collision Counting

In this paper we show how to generalize the quantum approximate counting...
research
10/06/2018

Higher-order Spectral Clustering for Heterogeneous Graphs

Higher-order connectivity patterns such as small induced sub-graphs call...
research
11/14/2017

Quantum transport senses community structure in networks

Quantum time evolution exhibits rich physics, attributable to the interp...
research
10/22/2019

Quantum Weighted Model Counting

In Weighted Model Counting (WMC) we assign weights to Boolean literals a...
research
03/10/2018

Submodular Hypergraphs: p-Laplacians, Cheeger Inequalities and Spectral Clustering

We introduce submodular hypergraphs, a family of hypergraphs that have d...

Please sign up or login with your details

Forgot password? Click here to reset