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Style Imitation and Chord Invention in Polyphonic Music with Exponential Families

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arxiv 1609.05152 v1 pith:6XVIY6CS submitted 2016-09-16 cs.AI cs.SD

Style Imitation and Chord Invention in Polyphonic Music with Exponential Families

classification cs.AI cs.SD
keywords modelmusiccorpuspolyphonicablecapacitychordsconstraints
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Modeling polyphonic music is a particularly challenging task because of the intricate interplay between melody and harmony. A good model should satisfy three requirements: statistical accuracy (capturing faithfully the statistics of correlations at various ranges, horizontally and vertically), flexibility (coping with arbitrary user constraints), and generalization capacity (inventing new material, while staying in the style of the training corpus). Models proposed so far fail on at least one of these requirements. We propose a statistical model of polyphonic music, based on the maximum entropy principle. This model is able to learn and reproduce pairwise statistics between neighboring note events in a given corpus. The model is also able to invent new chords and to harmonize unknown melodies. We evaluate the invention capacity of the model by assessing the amount of cited, re-discovered, and invented chords on a corpus of Bach chorales. We discuss how the model enables the user to specify and enforce user-defined constraints, which makes it useful for style-based, interactive music generation.

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  1. The Bach Doodle: Approachable music composition with machine learning at scale

    cs.SD 2019-07 unverdicted novelty 2.0

    An optimized browser-based version of the prior Coconet model enabled the Bach Doodle to process over 55 million harmonization requests in three days while releasing the collected user data.