计算机科学
公制(单位)
扩散
信息流
节点(物理)
信息级联
谣言
数据挖掘
机器学习
理论计算机科学
分布式计算
数学
语言学
运营管理
物理
哲学
统计
结构工程
公共关系
政治学
工程类
经济
热力学
作者
Didier A. Vega‐Oliveros,Liang Zhao,Anderson Rocha,Lilian Berton
标识
DOI:10.1109/tnnls.2021.3053263
摘要
Link prediction (LP) in networks aims at determining future interactions among elements; it is a critical machine-learning tool in different domains, ranging from genomics to social networks to marketing, especially in e-commerce recommender systems. Although many LP techniques have been developed in the prior art, most of them consider only static structures of the underlying networks, rarely incorporating the network's information flow. Exploiting the impact of dynamic streams, such as information diffusion, is still an open research topic for LP. Information diffusion allows nodes to receive information beyond their social circles, which, in turn, can influence the creation of new links. In this work, we analyze the LP effects through two diffusion approaches, susceptible-infected-recovered and independent cascade. As a result, we propose the progressive-diffusion (PD) method for LP based on nodes' propagation dynamics. The proposed model leverages a stochastic discrete-time rumor model centered on each node's propagation dynamics. It presents low-memory and low-processing footprints and is amenable to parallel and distributed processing implementation. Finally, we also introduce an evaluation metric for LP methods considering both the information diffusion capacity and the LP accuracy. Experimental results on a series of benchmarks attest to the proposed method's effectiveness compared with the prior art in both criteria.
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