Uma Análise sobre a Evolução das Preferências Musicais dos Usuários Utilizando Redes de Similaridade Temporal
Palabras clave:
Redes sociais temporais, redes de similaridade, preferências dos usuários, redes sociais de músicasResumen
Entender como as preferências dos usuários evoluem ao longo do tempo é uma importante tarefa de personalização. As abordagens existentes não levam em consideração a influência social queuns usuários exercem sobre os demais em redes sociais.Neste trabalho, a proposta é modelar os perfis de preferências dos usuários por meio de redes de similaridade temporal. Elas são capazes de capturar características sociais e temporais das preferências, levando em conta a semelhança entre o comportamento dos usuários. A modelagem proposta foi instanciada sobre uma rede social de músicas com o objetivo de entender o que direciona a evolução do gosto musical das pessoas. Como resultado, foi detectado que a tendência é que artistas e usuários semelhantes mantenham suas similaridades ao longo do tempo.Descargas
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