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  4. Learning and generation of slow sequences: an application to music composition
 
conference poster not in proceedings

Learning and generation of slow sequences: an application to music composition

Colombo, Florian  
2016
Lemanic Neuroscience Annual Meeting 2016

Human brains can deal with sequences with temporal dependencies on a broad range of timescales, many of which are several order of magnitude longer than neuronal timescales. Here we introduce an artificial intelligence that learns and produces the complex structure of music, a specific type of slow sequence. Our model employs a separation of fundamental features and multi-layer networks of gated recurrent units. We separate the information contained in monophonic melodies into their rhythm and melody features. The model processes these features in parallel while modelling the relation between them, effectively splitting the joint distribution over note duration and pitch into conditional probabilities. Using such an approach, we were able to automatically learn the temporal dependencies inherent of large corpora of Irish folk songs. We could use the extracted structural rules to generate interesting complete melodies or suggest possible continuations of melody fragments that are coherent with the characteristics of the fragments themselves.

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Type
conference poster not in proceedings
Author(s)
Colombo, Florian  
Date Issued

2016

Note

Poster presented at the Lemanic Neuroscience Annual Meeting 2016 in Les Diablerets, Switzerland.

URL

URL

https://www.unil.ch/ln/home/menuinst/ln-annual-meeting-lnam/lnam16.html
Written at

EPFL

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Event nameEvent placeEvent date
Lemanic Neuroscience Annual Meeting 2016

Les Diablerets, Switzerland

September 2-3, 2016

Available on Infoscience
February 1, 2017
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/134122
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