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A Hierarchical Latent Vector Model for Learning Long-Term Structure in Music
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2018
Year
MusicStructured PredictionComputational MusicologyEngineeringMachine LearningRecurrent VaesAutoencodersRecurrent Neural NetworkSpeech RecognitionNatural Language ProcessingData ScienceRecurrent Vae ModelsLong-term StructureMusic ProcessingSequence ModellingComputer ScienceDeep LearningMusic ClassificationAlgorithmic CompositionVariational AutoencoderSpeech Processing
The Variational Autoencoder (VAE) has proven to be an effective model for producing semantically meaningful latent representations for natural data. However, it has thus far seen limited application to sequential data, and, as we demonstrate, existing recurrent VAE models have difficulty modeling sequences with long-term structure. To address this issue, we propose the use of a hierarchical decoder, which first outputs embeddings for subsequences of the input and then uses these embeddings to generate each subsequence independently. This structure encourages the model to utilize its latent code, thereby avoiding the posterior collapse problem, which remains an issue for recurrent VAEs. We apply this architecture to modeling sequences of musical notes and find that it exhibits dramatically better sampling, interpolation, and reconstruction performance than a flat baseline model. An implementation of our MusicVAE is available online at this http URL.