In this paper, we introduce score difficulty classification as a subtask of music information retrieval (MIR), which may be used in
music education technologies, for personalised curriculum generation, and score retrieval. We introduce a novel dataset for our
task, Mikrokosmos-difficulty, containing 147 piano pieces in symbolic representation and the corresponding difficulty labels derived
by its composer Bela Bart ´ ok and the publishers. As part of our ´
methodology, we propose piano technique ...
In this paper, we introduce score difficulty classification as a subtask of music information retrieval (MIR), which may be used in
music education technologies, for personalised curriculum generation, and score retrieval. We introduce a novel dataset for our
task, Mikrokosmos-difficulty, containing 147 piano pieces in symbolic representation and the corresponding difficulty labels derived
by its composer Bela Bart ´ ok and the publishers. As part of our ´
methodology, we propose piano technique feature representations
based on different piano fingering algorithms. We use these features
as input for two classifiers: a Gated Recurrent Unit neural network
(GRU) with attention mechanism and gradient-boosted trees trained
on score segments. We show that for our dataset fingering based
features perform better than a simple baseline considering solely the
notes in the score. Furthermore, the GRU with attention mechanism
classifier surpasses the gradient-boosted trees. Our proposed models
are interpretable and are capable of generating difficulty feedback
both locally, on short term segments, and globally, for whole pieces.
Code, datasets, models, and an online demo are made available for
reproducibility.
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