Skip to main content

Research Repository

Advanced Search

101 mixes : a statistical analysis of mix-variation in a dataset of multi-track music mixes

Wilson, AD; Fazenda, BM

Authors

AD Wilson



Abstract

The act of mix-engineering is a complex combination of creative and technical processes; analysis is often performed by studying the techniques of a few expert practitioners, qualitatively. We propose to study the actions of a large group of mix-engineers of varying experience, introducing quantitative methodology to investigate mix-variation and the perception of quality. This paper describes the analysis of a dataset containing 101 alternate mixes generated by human mixers as part of an on-line mix competition. A varied selection of audio signal features is obtained from each mix and subsequent principal component analysis reveals four prominent dimensions of variation - `dynamics', `treble', `width' and `bass'. An ordinal logistic regression model suggests that the ranking of each mix in the competition was significantly influenced by these four dimensions. The implications for the design of intelligent music production systems are discussed.

Citation

Wilson, A., & Fazenda, B. (2015, October). 101 mixes : a statistical analysis of mix-variation in a dataset of multi-track music mixes. Presented at 139th International Convention of the Audio Engineering Society, New York City, New York, USA

Presentation Conference Type Other
Conference Name 139th International Convention of the Audio Engineering Society
Conference Location New York City, New York, USA.
Start Date Oct 29, 2015
End Date Nov 1, 2015
Acceptance Date Jul 1, 2015
Publication Date Oct 23, 2015
Deposit Date Dec 21, 2015
Publisher URL http://www.aes.org/e-lib/browse.cfm?elib=17955
Additional Information Event Type : Conference