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[AUDITORY] Call for Papers for a Special Collection of Music & Science on “Explaining music with AI: Advancing the scientific understanding of music through computation”



Dear Auditory list members,

We would like to bring your attention to the following call for contributions to a special collection of the journal, Music & Science, (https://journals.sagepub.com/home/mns) on the topic of "Explaining music with AI: Advancing the scientific understanding of music through computation". We are aiming to have the collection published (open access) by the end of May 2023. Deadline for submissions of full papers is 31 August 2022.

Kind regards,

David Meredith, Anja Volk and Tom Collins (guest editors)

===================================================================

Call for Papers for a Special Collection of Music & Science on 
    “Explaining music with AI: Advancing the scientific 
       understanding of music through computation”

   Guest edited by David Meredith, Anja Volk & Tom Collins

    DEADLINE FOR SUBMISSION: Wednesday 31 August, 2022

===================================================================

In recent years, a huge number of publications, particularly in the areas of music information retrieval and music generation, have reported on projects in which deep learning neural network models have been used successfully to carry out a wide variety of generation, regression and classification tasks on musical data. This work has significantly contributed to the arsenal of computational tools that we have at our disposal, if we want to explore, organise, create or simply enjoy digital music resources.

However, the majority of such models are “black box” models that have thousands or even millions of free parameters, whose values are determined through training on, typically, large amounts of data. The computing pioneer, John von Neumann, allegedly joked, “With four free variables I can fit an elephant and with five I can make him wiggle his trunk” (Freeman Dyson, 2004, “A meeting with Enrico Fermi”, Nature, 427:297). Such considerations prompt us to question whether such black-box deep learning models make a significant contribution to our scientific understanding of music, musical processes and musical behaviour.

For this special collection, we seek high quality contributions that report on recent research in which any computational method has been used to advance our understanding of how and why music is created, communicated and received. We are particularly interested in shining a light on computational methods that have perhaps not received the attention they deserve because of the dominance of deep learning in recent years. At the same time, contributions in which deep learning and other neural network models have been shown to advance the scientific understanding of music are also very welcome.

Submissions may address any aspect of musical behaviour, including, but not limited to, composition, improvisation, performance, listening, musical gestures and dance. Contributions may also focus on any aspects of music, e.g., rhythm, harmony, melody, counterpoint, instrumentation or timbre. We likewise set no constraints on the considered music’s style, genre, period or place of origin. However, the reported work must have adopted a computational approach that has led to an advancement in our scientific understanding of music.

We are also keen to cover a variety of application areas where music is put to use, not only for pure entertainment or artistic purposes, but also, for example, in healthcare, in rituals and ceremonies, in meditation, in film soundtracks or video games, or even, for example, in politics or advertising. We welcome, in particular, contributions where a computational approach has been employed in conjunction with methodologies and knowledge from other fields, such as psychology, musicology, sociology, biology, physics, anthropology or ethnomusicology.

If you are interested in submitting a manuscript for this special collection, please send an expression of interest to the guest editors (at <dave@xxxxxxxxxxxxx>), containing the following information:

- Draft title
- Names, full contact details and affiliations of authors
- 200 word overview of the expected content of the paper
- References to any recent related publications by the authors 
  (including any recent conference papers on a related topic)
  
This expression of interest should be sent as soon as possible, but preferably by Wednesday 16 March 2022.
The deadline for submission of full manuscripts is Wednesday 31 August 2022. Full manuscripts will need to be submitted using the online submission system at https://mc.manuscriptcentral.com/mns and should follow the Submission Guidelines, which can be accessed at https://journals.sagepub.com/author-instructions/MNS.
Accepted papers in this collection will be published with open access by the end of May 2023.

IMPORTANT DATES
===============

- Initial statement of interest: 
    As soon as possible, but preferably by Wednesday 16 March 2022
- Submission of first version of full manuscript:
    By Wednesday 31 August 2022
- First decision on manuscript sent to authors:
    By Wednesday 30 November 2022
- Submission of revised manuscripts:
    By Tuesday 28 February 2022
- Results of reviews of revised manuscripts sent to authors: 
    By Tuesday 2 May 2023
- Publication of accepted papers online:
    By Wednesday 31 May 2023

============================================================================

David Meredith 
Department of Architecture, Design, and Media Technology, Aalborg University, Denmark

Anja Volk
Department of Information and Computing Sciences, Utrecht University, The Netherlands

Tom Collins
Department of Music, University of York, United Kingdom