HoNVis: Visualizing and Exploring Higher-Order Networks

02/02/2017
by   Jun Tao, et al.
0

Unlike the conventional first-order network (FoN), the higher-order network (HoN) provides a more accurate description of transitions by creating additional nodes to encode higher-order dependencies. However, there exists no visualization and exploration tool for the HoN. For applications such as the development of strategies to control species invasion through global shipping which is known to exhibit higher-order dependencies, the existing FoN visualization tools are limited. In this paper, we present HoNVis, a novel visual analytics framework for exploring higher-order dependencies of the global ocean shipping network. Our framework leverages coordinated multiple views to reveal the network structure at three levels of detail (i.e., the global, local, and individual port levels). Users can quickly identify ports of interest at the global level and specify a port to investigate its higher-order nodes at the individual port level. Investigating a larger-scale impact is enabled through the exploration of HoN at the local level. Using the global ocean shipping network data, we demonstrate the effectiveness of our approach with a real-world use case conducted by domain experts specializing in species invasion. Finally, we discuss the generalizability of this framework to other real-world applications such as information diffusion in social networks and epidemic spreading through air transportation.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/19/2018

Tools for higher-order network analysis

Networks are a fundamental model of complex systems throughout the scien...
research
03/27/2023

Hypergraphx: a library for higher-order network analysis

From social to biological systems, many real-world systems are character...
research
08/15/2019

HONEM: Network Embedding Using Higher-Order Patterns in Sequential Data

Representation learning offers a powerful alternative to the oft painsta...
research
01/16/2023

Bayesian Detection of Mesoscale Structures in Pathway Data on Graphs

Mesoscale structures are an integral part of the abstraction and analysi...
research
09/29/2020

A local geometry of hyperedges in hypergraphs, and its applications to social networks

In many real world datasets arising from social networks, there are hidd...
research
06/02/2017

Higher-order meshing of implicit geometries - part I: Integration and interpolation in cut elements

An accurate implicit description of geometries is enabled by the level-s...
research
04/06/2022

CHIEF: Clustering with Higher-order Motifs in Big Networks

Clustering a group of vertices in networks facilitates applications acro...

Please sign up or login with your details

Forgot password? Click here to reset