Understanding the network formation pattern for better link prediction
Jiating Yu, Ling-Yun Wu

TL;DR
This paper introduces MOLI, a novel link prediction method leveraging multi-order local network information, outperforming existing algorithms across diverse network types and revealing varied local information utilization patterns.
Contribution
The paper proposes MOLI, an adaptive link prediction approach using multi-order local information and network diffusion, providing a comprehensive understanding of network formation patterns.
Findings
MOLI outperforms 11 existing algorithms on 11 network datasets.
Different networks utilize local information differently, with some following the Quadrilateral Closure Principle.
Classical common neighbor algorithms are less adaptable across diverse social networks.
Abstract
As a classical problem in the field of complex networks, link prediction has attracted much attention from researchers, which is of great significance to help us understand the evolution and dynamic development mechanisms of networks. Although various network type-specific algorithms have been proposed to tackle the link prediction problem, most of them suppose that the network structure is dominated by the Triadic Closure Principle. We still lack an adaptive and comprehensive understanding of network formation patterns for predicting potential links. In addition, it is valuable to investigate how network local information can be better utilized. To this end, we proposed a novel method named Link prediction using Multiple Order Local Information (MOLI) that exploits the local information from the neighbors of different distances, with parameters that can be a prior-driven based on prior…
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Taxonomy
TopicsComplex Network Analysis Techniques · Opinion Dynamics and Social Influence · Mental Health Research Topics
MethodsDiffusion
