Data Representation for Predicting Harmonic Clusters with LSTM

Description

The purpose of this project is to create a useful tool for musicians that utilizes the harmonic content of their playing to recommend new, relevant chords to play. This is done by training various Long Short-Term Memory (LSTM) Recurrent Neural

The purpose of this project is to create a useful tool for musicians that utilizes the harmonic content of their playing to recommend new, relevant chords to play. This is done by training various Long Short-Term Memory (LSTM) Recurrent Neural Networks (RNNs) on the lead sheets of 100 different jazz standards. A total of 200 unique datasets were produced and tested, resulting in the prediction of nearly 51 million chords. A note-prediction accuracy of 82.1% and a chord-prediction accuracy of 34.5% were achieved across all datasets. Methods of data representation that were rooted in valid music theory frameworks were found to increase the efficacy of harmonic prediction by up to 6%. Optimal LSTM input sizes were also determined for each method of data representation.

Downloads

One or more components are restricted to ASU affiliates. Please sign in to view the rest.
Restrictions Statement

Barrett Honors College theses and creative projects are restricted to ASU community members.

Details

Contributors
Date Created
2021-05
Embargo Release Date
Resource Type
Language
  • eng
Additional Information
English
Series
  • Academic Year 2020-2021
Extent
  • 7 pages