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Moonbeam: A MIDI Foundation Model Using Both Absolute and Relative Music Attributes

Moonbeam: A MIDI Foundation Model Using Both Absolute and Relative Music Attributes

来源:Arxiv_logoArxiv
英文摘要

Moonbeam is a transformer-based foundation model for symbolic music, pretrained on a large and diverse collection of MIDI data totaling 81.6K hours of music and 18 billion tokens. Moonbeam incorporates music-domain inductive biases by capturing both absolute and relative musical attributes through the introduction of a novel domain-knowledge-inspired tokenization method and Multidimensional Relative Attention (MRA), which captures relative music information without additional trainable parameters. Leveraging the pretrained Moonbeam, we propose 2 finetuning architectures with full anticipatory capabilities, targeting 2 categories of downstream tasks: symbolic music understanding and conditional music generation (including music infilling). Our model outperforms other large-scale pretrained music models in most cases in terms of accuracy and F1 score across 3 downstream music classification tasks on 4 datasets. Moreover, our finetuned conditional music generation model outperforms a strong transformer baseline with a REMI-like tokenizer. We open-source the code, pretrained model, and generated samples on Github.

Zixun Guo、Simon Dixon

计算技术、计算机技术

Zixun Guo,Simon Dixon.Moonbeam: A MIDI Foundation Model Using Both Absolute and Relative Music Attributes[EB/OL].(2025-05-21)[2025-06-30].https://arxiv.org/abs/2505.15559.点此复制

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