Composition And Evaluation Of Music Using Artificial Intelligence: A Genetic Algorithm Approach
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University of Ghana
Abstract
Abstract
Advancement in technology has contributed enormously to music composition, distribution
and consumption. Algorithmic music is the use of technologies and techniques to aid music
composition. Currently, there are various algorithms including rule-based, memetic, deep
convolutional generative adversarial networks (GAN), particle swarm optimization (PSO)
and stochastic composition algorithm for composing music. However, music obtained from
these algorithms may not be appealing although the algorithm used may produce the optimal
music based on the criteria defined by the composer. Furthermore, the optimal music
produced shows that the aesthetic quality of the music is limited. This study, therefore, seeks
to compose monophonic music using genetic algorithm and assess how it is appealing to
humans. Nine (9) melodies were composed. The compositions were three versions each for a
GA terminated at ten thousand, twenty thousand and sixty thousand generations. The changes
in total fitness scores over the various generations were plotted and analysed. It was concluded
that the algorithm performed best when terminated at ten thousand generations by producing
the optimal music around 750th generation. However, a survey conducted to evaluate the
aesthetic performance of the algorithm through human evaluation demonstrated that the music
obtained from the termination at 60000th generation was the most pleasant composition. This
therefore suggests that although a GA algorithm may perform better in terms of composition
time, it does not guarantee an aesthetic music.
Description
Mphil In Computer Science
Citation
Wiafe,A. (2020) Composition And Evaluation Of Music Using Artificial
Intelligence: A Genetic Algorithm Approach
,University of Ghana, Legon, http://ugspace.ug.edu.gh:8080/handle/123456789/38844