Symbolic Music
Symbolic music research focuses on representing and processing music using discrete symbols, enabling computational analysis and generation. Current research emphasizes developing and applying deep learning models, particularly transformers and graph neural networks, to tasks such as music transcription, generation, and style transfer, often employing novel tokenization strategies to improve model performance. This field is significant for advancing music information retrieval, facilitating music education through automated difficulty assessment, and enabling new forms of human-computer musical interaction. The availability of large, open-source datasets is also a key area of ongoing development.
Papers
MidiTok Visualizer: a tool for visualization and analysis of tokenized MIDI symbolic music
Michał Wiszenko, Kacper Stefański, Piotr Malesa, Łukasz Pokorzyński, Mateusz Modrzejewski
Symbotunes: unified hub for symbolic music generative models
Paweł Skierś, Maksymilian Łazarski, Michał Kopeć, Mateusz Modrzejewski