Power-Hop: A Pervasive Observation for Real Complex Networks

Abstract

Complex networks have been shown to exhibit universal properties, with one of the most consistent patterns being the scale-free degree distribution, but are there regularities obeyed by the r-hop neighborhood in real networks? We answer this question by identifying another power-law pattern that describes the relationship between the fractions of node pairs C(r) within r hops and the hop count r. This scale-free distribution is pervasive and describes a large variety of networks, ranging from social and urban to technological and biological networks. In particular, inspired by the definition of the fractal correlation dimensionD2 on a point-set, we consider the hop-count r to be the underlying distance metric between two vertices of the network, and we examine the scaling of C(r) with r. We find that this relationship follows a power-law in real networks within the range 2 r d, where d is the effective diameter of the network, that is, the 90-th percentile distance. We term this relationship as power-hop and the corresponding power-law exponent as power-hop exponent h. We provide theoretical justification for this pattern under successful existing network models, while we analyze a large set of real and synthetic network datasets and we show the pervasiveness of the power-hop.

Open PDF

Document Details

Document Type
Technical Report
Publication Date
Mar 14, 2016
Accession Number
AD1042206

Entities

People

  • Bryan Hooi
  • Christos Faloutsos
  • Evangelos Papalexakis
  • Konstantinos Pelechrinis

Organizations

  • Carnegie Mellon University

Tags

Communities of Interest

  • Energy and Power Technologies

DTIC Thesaurus Topics

  • Computer Science
  • Data Sets
  • Diameters
  • Electrical Grids
  • Information Science
  • Load Monitoring
  • Materials
  • Networks
  • New York
  • Numbers
  • Probability
  • Social Media
  • Social Networks
  • Statistical Tests
  • Statistics
  • Topology
  • United States

Fields of Study

  • Computer science

Readers

  • Computer Networking
  • Neural Network Machine Learning.
  • Theoretical Analysis.