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Master's Dissertation
DOI
https://doi.org/10.11606/D.55.2021.tde-09092021-105904
Document
Author
Full name
Ana Clara Kandratavicius Ferreira
E-mail
Institute/School/College
Knowledge Area
Date of Defense
Published
São Carlos, 2021
Supervisor
Committee
Rodrigues, Francisco Aparecido (President)
Amancio, Diego Raphael
Izbicki, Rafael
Ramos, Pedro Luiz
Title in Portuguese
Previsão de Arestas em Redes Complexas
Keywords in Portuguese
Mapeamento de nós
Medidas de similaridade
Modelos de redes
Previsão de arestas
Redes complexas
Abstract in Portuguese
Este trabalho pretende analisar o problema de previsão e reconstrução de arestas por meio da observação das similaridades entre os nós. A previsão de arestas é um problema de ampla relevância para diversas áreas de conhecimento incluindo estudos sociais, neurociência e redes de infraestrutura. Nestes casos temos o conjunto de arestas observáveis, nosso objetivo é por meio da observação destas e das similaridades entre os vértices que se conectam, inferir arestas faltantes ou arestas que se formarão em algum tempo no futuro. Esse estudo permitirá uma melhor compreensão sobre a relação entre a as características estruturais ou particulares dos vértices e a formação de conexões em redes.
Title in English
Link Prediction in Complex Networks
Keywords in English
Complex networks
Link prediction
network models
Node embedding
Similarity measures
Abstract in English
The present work intends to analyze the problem of forecasting and reconstruction of edges by observing the similarities between the nodes of a network. Link prediction is a problem of wide scope for several areas of knowledge, including social studies, neuroscience and infrastructure networks. In these cases we have a set of observable links, our goal is to observe these and the similarities between the vertices that connect, infer missing links or links that will form at some time in the future. This study allows a better understanding of the relationship between the network structural characteristics or particular atributes of the vertices and the formation of composition in networks
 
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Publishing Date
2021-09-09
 
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