2005 | OriginalPaper | Chapter
Developing Fitness Functions for Pleasant Music: Zipf’s Law and Interactive Evolution Systems
Authors : Bill Manaris, Penousal Machado, Clayton McCauley, Juan Romero, Dwight Krehbiel
Published in: Applications of Evolutionary Computing
Publisher: Springer Berlin Heidelberg
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In domains such as music and visual art, where the quality of an individual often depends on subjective or hard to express concepts, the automating fitness assignment becomes a difficult problem. This paper discusses the application of Zipf’s Law in evaluation of music pleasantness. Preliminary results indicate that a set of Zipf-based metrics can be effectively used to classify music according to pleasantness as reported by human subjects. These studies suggest that metrics based on Zipf’s law may capture essential aspects of proportion in music as it relates to music aesthetics. We discuss the significance of these results for the automation of fitness assignment in evolutionary music systems.