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arxiv: 2303.01665 · v1 · pith:TVX3S2Q2new · submitted 2023-03-03 · 💻 cs.SD · cs.MM· eess.AS

LooperGP: A Loopable Sequence Model for Live Coding Performance using GuitarPro Tablature

classification 💻 cs.SD cs.MMeess.AS
keywords loopergpmusicalliveloopablecodingdatasetgeneratingloops
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Despite their impressive offline results, deep learning models for symbolic music generation are not widely used in live performances due to a deficit of musically meaningful control parameters and a lack of structured musical form in their outputs. To address these issues we introduce LooperGP, a method for steering a Transformer-XL model towards generating loopable musical phrases of a specified number of bars and time signature, enabling a tool for live coding performances. We show that by training LooperGP on a dataset of 93,681 musical loops extracted from the DadaGP dataset, we are able to steer its generative output towards generating 3x as many loopable phrases as our baseline. In a subjective listening test conducted by 31 participants, LooperGP loops achieved positive median ratings in originality, musical coherence and loop smoothness, demonstrating its potential as a performance tool.

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