Title:

Impromptune: Symbolic Music Generation with Relative Attention Mechanisms

Poster

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Abstract

By combining attention-based mechanisms that have proved beneficial in the field of natural language processing with domain-specific knowledge about the structure of music, better predictions about piece continuations can be made. The goal of this work is to adapt current natural language processing techniques to a musical domain, and to generate new music by predicting continuations on a sequence of notes. An adaptation of traditional attention mechanisms to create a single prediction from sequential input is used to extend musical pieces by appending new elements repeatedly.

Authors

First Name Last Name
Connor Lennox

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Submission Details

Conference URC
Event Interdisciplinary Science and Engineering (ISE)
Department Computer Science (ISE)
Group Data Science
Added April 24, 2021, 4:56 p.m.
Updated April 19, 2023, 10:39 a.m.
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