FRADET Nathan

Tiến sĩ
Nhóm nghiên cứu : SMA
Ngày đi : 03/31/2024
https://nathanfradet.com
https://nathanfradet.com

Ban lãnh đạo nghiên cứu : Amal EL FALLAH SEGHROUCHNI

Đồng hướng dẫn : BRIOT Jean-Pierre

Deep Learning for Symbolic Music Modeling

Symbolic music modeling (SMM) represents the tasks performed by Deep Learning models on the symbolic music modality, among which are music generation or music information retrieval. SMM is often handled with sequential models that process data as sequences of discrete elements called tokens. This thesis studies how symbolic music can be tokenized, and what are the impacts of the different ways to do it impact models performances and efficiency. Current challenges include the lack of software to perform this step, poor model efficiency and inexpressive tokens. We address these challenges by:

  1. developing a complete, flexible and easy to use software library allowing to tokenize symbolic music;
  2. analyzing the impact of various tokenization strategies on model performances;
  3. increasing the performance and efficiency of models by leveraging large music vocabularies with the use of byte pair encoding;
  4. building one of the first large-scale model for symbolic music generation.

Bảo vệ luận án : 03/14/2024

Hội đồng giám khảo :

Jean-Pierre Briot - LIP6, Sorbonne Université/CNRS
Amal El Fallah Seghrouchni - LIP6, Sorbonne Université/CNRS
Nicolas Gutowski - LERIA, Université d'Angers
Fabien Chhel - ESEO, ERIS
Louis Bigo - LaBRI, Université de Bordeaux/CNRS
Philippe Pasquier - Simon Fraser University
François Pachet - Spotify
Gaëtan Hadjeres - Sony AI

Ngày đi : 03/31/2024

Bài báo khoa học 2021-2024