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This Time with Feeling: Learning Expressive Musical Performance

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arxiv 1808.03715 v1 pith:5MUEQW7O submitted 2018-08-10 cs.SD cs.LGeess.AS

This Time with Feeling: Learning Expressive Musical Performance

classification cs.SD cs.LGeess.AS
keywords dataexamplesexpressivegenerationperformanceappropriatebeencharacteristics
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Music generation has generally been focused on either creating scores or interpreting them. We discuss differences between these two problems and propose that, in fact, it may be valuable to work in the space of direct $\it performance$ generation: jointly predicting the notes $\it and$ $\it also$ their expressive timing and dynamics. We consider the significance and qualities of the data set needed for this. Having identified both a problem domain and characteristics of an appropriate data set, we show an LSTM-based recurrent network model that subjectively performs quite well on this task. Critically, we provide generated examples. We also include feedback from professional composers and musicians about some of these examples.

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