检查表模型提高输出流畅性在钢琴指法预测

Nikita Srivatsan, Taylor Berg-Kirkpatrick
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引用次数: 1

摘要

在这项工作中,我们提出了一种预测钢琴音乐指法的新方法。虽然之前的神经方法通常将其视为具有独立预测的序列标记问题,但我们提出了一个通过强化学习训练的清单系统,该系统除了隐藏状态外,还保留了最近预测的表示,使其能够学习输出结构的软约束。我们还证明,通过修改输入表示——在之前使用神经模型的工作中,通常采用对钢琴上的单个键进行单热编码的形式——将键盘上的相对位置编码为先前的音符,我们可以获得更好的性能。此外,我们重新评估了原始每个音符标记精度作为评估指标的使用,注意到它不能充分衡量模型输出的流畅性,即人类可玩性。为此,我们比较了几种统计方法,这些统计方法跟踪相邻手指预测的频率,虽然独立合理,但按顺序执行将具有物理挑战性,并实施强化学习策略,以最大限度地减少这些作为我们训练损失的一部分。最后,通过人类专家评估,我们证明了直接归因于这些指标改进的可执行性的显着收益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Checklist Models for Improved Output Fluency in Piano Fingering Prediction
In this work we present a new approach for the task of predicting fingerings for piano music. While prior neural approaches have often treated this as a sequence tagging problem with independent predictions, we put forward a checklist system, trained via reinforcement learning, that maintains a representation of recent predictions in addition to a hidden state, allowing it to learn soft constraints on output structure. We also demonstrate that by modifying input representations -- which in prior work using neural models have often taken the form of one-hot encodings over individual keys on the piano -- to encode relative position on the keyboard to the prior note instead, we can achieve much better performance. Additionally, we reassess the use of raw per-note labeling precision as an evaluation metric, noting that it does not adequately measure the fluency, i.e. human playability, of a model's output. To this end, we compare methods across several statistics which track the frequency of adjacent finger predictions that while independently reasonable would be physically challenging to perform in sequence, and implement a reinforcement learning strategy to minimize these as part of our training loss. Finally through human expert evaluation, we demonstrate significant gains in performability directly attributable to improvements with respect to these metrics.
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