Learning long-term music representations via hierarchical contextual constraints

February 13, 2022 ยท Declared Dead ยท ๐Ÿ› International Society for Music Information Retrieval Conference

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Authors Shiqi Wei, Gus Xia arXiv ID 2202.06180 Category cs.SD: Sound Cross-listed cs.IR, cs.LG, eess.AS Citations 9 Venue International Society for Music Information Retrieval Conference Last Checked 3 months ago
Abstract
Learning symbolic music representations, especially disentangled representations with probabilistic interpretations, has been shown to benefit both music understanding and generation. However, most models are only applicable to short-term music, while learning long-term music representations remains a challenging task. We have seen several studies attempting to learn hierarchical representations directly in an end-to-end manner, but these models have not been able to achieve the desired results and the training process is not stable. In this paper, we propose a novel approach to learn long-term symbolic music representations through contextual constraints. First, we use contrastive learning to pre-train a long-term representation by constraining its difference from the short-term representation (extracted by an off-the-shelf model). Then, we fine-tune the long-term representation by a hierarchical prediction model such that a good long-term representation (e.g., an 8-bar representation) can reconstruct the corresponding short-term ones (e.g., the 2-bar representations within the 8-bar range). Experiments show that our method stabilizes the training and the fine-tuning steps. In addition, the designed contextual constraints benefit both reconstruction and disentanglement, significantly outperforming the baselines.
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