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A Large-Scale Study of Language Models for Chord Prediction

Published 5 Apr 2018 in cs.LG, cs.SD, eess.AS, and stat.ML | (1804.01849v1)

Abstract: We conduct a large-scale study of LLMs for chord prediction. Specifically, we compare N-gram models to various flavours of recurrent neural networks on a comprehensive dataset comprising all publicly available datasets of annotated chords known to us. This large amount of data allows us to systematically explore hyper-parameter settings for the recurrent neural networks---a crucial step in achieving good results with this model class. Our results show not only a quantitative difference between the models, but also a qualitative one: in contrast to static N-gram models, certain RNN configurations adapt to the songs at test time. This finding constitutes a further step towards the development of chord recognition systems that are more aware of local musical context than what was previously possible.

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