Quantum walk inspired algorithm for graph similarity and isomorphism

02/28/2019
by   Callum Schofield, et al.
0

Large scale complex systems, such as social networks, electrical power grid, database structure, consumption pattern or brain connectivity, are often modeled using network graphs. Valuable insight can be gained by measuring the similarity between network graphs in order to make quantitative comparisons. Since these networks can be very large, scalability and efficiency of the algorithm are key concerns. More importantly, for graphs with unknown labeling, this graph similarity problem requires exponential time to solve using existing algorithms. In this paper, we propose a quantum walk inspired algorithm, which provides a solution to the graph similarity problem without prior knowledge on graph labeling. This algorithm is capable of distinguishing between minor structural differences, such as between strongly regular graphs with the same parameters. The algorithm has polynomial complexity, scaling with O(n^9).

READ FULL TEXT
research
03/23/2021

Quantum walk-based search algorithms with multiple marked vertices

The quantum walk is a powerful tool to develop quantum algorithms, which...
research
04/25/2019

Quantum Walk Sampling by Growing Seed Sets

This work describes a new algorithm for creating a superposition over th...
research
04/28/2019

A Quantum-inspired Similarity Measure for the Analysis of Complete Weighted Graphs

We develop a novel method for measuring the similarity between complete ...
research
07/01/2018

A complete characterization of plateaued Boolean functions in terms of their Cayley graphs

In this paper we find a complete characterization of plateaued Boolean f...
research
05/29/2021

Graph Similarity Description: How Are These Graphs Similar?

How do social networks differ across platforms? How do information netwo...
research
05/03/2018

Dynamic Structural Similarity on Graphs

One way of characterizing the topological and structural properties of v...

Please sign up or login with your details

Forgot password? Click here to reset