Unit Disk Graph-Based Node Similarity Index for Complex Network Analysis

We seek to quantify the extent of similarity among nodes in a complex network with respect to two or more node-level metrics (like centrality metrics). In this pursuit, we propose the following unit disk graph-based approach: we first normalize the values for the node-level metrics (using the sum of...

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Main Author: Natarajan Meghanathan
Format: Article
Language:English
Published: Hindawi-Wiley 2019-01-01
Series:Complexity
Online Access:http://dx.doi.org/10.1155/2019/6871874
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spelling doaj-717af50606d644d9a8c9ee212e2153352020-11-25T02:16:14ZengHindawi-WileyComplexity1076-27871099-05262019-01-01201910.1155/2019/68718746871874Unit Disk Graph-Based Node Similarity Index for Complex Network AnalysisNatarajan Meghanathan0Professor of Computer Science, Jackson State University, Jackson, MS 39217, USAWe seek to quantify the extent of similarity among nodes in a complex network with respect to two or more node-level metrics (like centrality metrics). In this pursuit, we propose the following unit disk graph-based approach: we first normalize the values for the node-level metrics (using the sum of the squares approach) and construct a unit disk graph of the network in a coordinate system based on the normalized values of the node-level metrics. There exists an edge between two vertices in the unit disk graph if the Euclidean distance between the two vertices in the normalized coordinate system is within a threshold value (ranging from 0 tok, where k is the number of node-level metrics considered). We run a binary search algorithm to determine the minimum value for the threshold distance that would yield a connected unit disk graph of the vertices. We refer to “1 − (minimum threshold distance/k)” as the node similarity index (NSI; ranging from 0 to 1) for the complex network with respect to the k node-level metrics considered. We evaluate the NSI values for a suite of 60 real-world networks with respect to both neighborhood-based centrality metrics (degree centrality and eigenvector centrality) and shortest path-based centrality metrics (betweenness centrality and closeness centrality).http://dx.doi.org/10.1155/2019/6871874
collection DOAJ
language English
format Article
sources DOAJ
author Natarajan Meghanathan
spellingShingle Natarajan Meghanathan
Unit Disk Graph-Based Node Similarity Index for Complex Network Analysis
Complexity
author_facet Natarajan Meghanathan
author_sort Natarajan Meghanathan
title Unit Disk Graph-Based Node Similarity Index for Complex Network Analysis
title_short Unit Disk Graph-Based Node Similarity Index for Complex Network Analysis
title_full Unit Disk Graph-Based Node Similarity Index for Complex Network Analysis
title_fullStr Unit Disk Graph-Based Node Similarity Index for Complex Network Analysis
title_full_unstemmed Unit Disk Graph-Based Node Similarity Index for Complex Network Analysis
title_sort unit disk graph-based node similarity index for complex network analysis
publisher Hindawi-Wiley
series Complexity
issn 1076-2787
1099-0526
publishDate 2019-01-01
description We seek to quantify the extent of similarity among nodes in a complex network with respect to two or more node-level metrics (like centrality metrics). In this pursuit, we propose the following unit disk graph-based approach: we first normalize the values for the node-level metrics (using the sum of the squares approach) and construct a unit disk graph of the network in a coordinate system based on the normalized values of the node-level metrics. There exists an edge between two vertices in the unit disk graph if the Euclidean distance between the two vertices in the normalized coordinate system is within a threshold value (ranging from 0 tok, where k is the number of node-level metrics considered). We run a binary search algorithm to determine the minimum value for the threshold distance that would yield a connected unit disk graph of the vertices. We refer to “1 − (minimum threshold distance/k)” as the node similarity index (NSI; ranging from 0 to 1) for the complex network with respect to the k node-level metrics considered. We evaluate the NSI values for a suite of 60 real-world networks with respect to both neighborhood-based centrality metrics (degree centrality and eigenvector centrality) and shortest path-based centrality metrics (betweenness centrality and closeness centrality).
url http://dx.doi.org/10.1155/2019/6871874
work_keys_str_mv AT natarajanmeghanathan unitdiskgraphbasednodesimilarityindexforcomplexnetworkanalysis
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