Coupled Recurrent Models for Polyphonic Music Composition

Citation:

J. Thickstun, Z. Harchaoui, D. P. Foster, and S. M. Kakade, Coupled Recurrent Models for Polyphonic Music Composition. ISMIR: ArXiv Report, 2019.

Abstract:

This paper introduces a novel recurrent model for music composition that is tailored to the structure of polyphonic music. We propose an efficient new conditional probabilistic factorization of musical scores, viewing a score as a collection of concurrent, coupled sequences: i.e. voices. To model the conditional distributions, we borrow ideas from both convolutional and recurrent neural models; we argue that these ideas are natural for capturing music's pitch invariances, temporal structure, and polyphony. We train models for single-voice and multi-voice composition on 2,300 scores from the KernScores dataset.

Publisher's Version

See also: 2019
Last updated on 10/10/2021