Amostragem para grandes volumes de dados: uma aplicação em redes complexas

The main objective of this work is to implement and to evaluate options of sampling plans of algorithms for calculation of betweenness centrality, a measure used to identify important and influential vertices in complex networks aiming to improve the quality of the estimates. For statistical evaluat...

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Detalhes bibliográficos
Autor: Souza, Roberta Carneiro de
Formato: tesis doctoral
Estado:Versión publicada
Fecha de publicación:2018
País:Brasil
Recursos:Universidade Federal do Rio de Janeiro (UFRJ)
Repositorio:Repositório Institucional da UFRJ
Idioma:portugués
OAI Identifier:oai:pantheon.ufrj.br:11422/11622
Acesso em linha:http://hdl.handle.net/11422/11622
Access Level:acceso abierto
Palavra-chave:Engenharia civil
Amostragem
Redes complexas
Grafos
Mineração de dados
Centralidade de intermediação
Agrupamento
CNPQ::ENGENHARIAS::ENGENHARIA CIVIL
Descrição
Resumo:The main objective of this work is to implement and to evaluate options of sampling plans of algorithms for calculation of betweenness centrality, a measure used to identify important and influential vertices in complex networks aiming to improve the quality of the estimates. For statistical evaluation of variability of the estimates, indicators used in sampling, but not yet in data mining in complex networks, will be proposed. The techniques used in combination to reach the objectives and propose a new algorithm were: sampling, clustering (or community detection) and parallel computing. The sampling feature has been widely used as a tool to reduce dimensionality in data mining problems to streamline processes and reduce costs with data storage. The techniques of grouping for the detection of communities have a high correlation with the measure to be estimated, the betweenness centrality. One of the factors used in choosing the methods used in the implementation of the algorithms was the possibility of using parallel or distributed computing. After the review of the literature and evaluation of the results of the experiments carried out, it is concluded that the proposed algorithm contributes to the state of the art of the use of sampling to estimate betweenness centrality in large complex networks, a challenge in the current scenario of big data, by adding several techniques that optimize the extraction of data knowledge. The proposed algorithm, in addition to improving the quality of the estimates, presented a reduction in the processing time while keeping the scalability.