Automatic identification of preferred music genres: an exploratory machine learning approach to support personalized music therapy

Ingrid Bruno Nunes,Maíra Araújo de Santana, Nicole Charron, Hyngrid Souza e Silva, Caylane Mayssa de Lima Simões, Camila Lins, Ana Beatriz de Souza Sampaio, Arthur Moreira Nogueira de Melo, Thailson Caetano Valdeci da Silva, Camila Tiodista, Nathália Córdula de Brito,Arianne Sarmento Torcate,Juliana Carneiro Gomes,Giselle Machado Magalhães Moreno,Cristine Martins Gomes de Gusmão,Wellington Pinheiro dos Santos

Multimedia Tools and Applications(2024)

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摘要
Music accompanies all phases of our lives, and when we reach old age, music becomes a direct symbol of nostalgia. Autobiographical memories are essential to an individual’s sense of identity, continuity, and meaning. But some pathologies, such as dementia, can interrupt the memory storage process. Music can help recall and evoke memories and can be used in alternative treatments for dementia. This work aims to propose an architecture for a music recommendation system capable of recommending music according to musical genre, with the aim of helping music therapists in therapies addressed to elderly people with dementia in initial states. Here we used data from the public music database Emotify, which is composed of 400 songs labeled by 1595 participants in 7975 sessions. Both channels of the songs were windowed using 10s windows with 5s overlap. The data from these windows were represented by 34 time and frequency features. Then, we assessed and compared the performance of classifiers based on support vector machines, decisions trees and Bayesian network. The most suitable architecture in this experimental study was the Random Forest with 250 trees, with an accuracy of 83.42
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关键词
Recommendation system,Music recommendation system,Intelligent algorithms,Music therapy,Dementia,Elderly
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