Co-creation and ownership for AI radio
- URL: http://arxiv.org/abs/2206.00485v1
- Date: Wed, 1 Jun 2022 13:35:03 GMT
- Title: Co-creation and ownership for AI radio
- Authors: Skylar Gordon, Robert Mahari, Manaswi Mishra, and Ziv Epstein
- Abstract summary: We present Artificial$.!$fm, a proof-of-concept casual creator that blends AI-music generation, subjective ratings, and personalized recommendation.
We report on the design and development of Artificial$.!$fm, and provide a legal analysis on the ownership of artifacts generated on the platform.
- Score: 1.2839524529089017
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Recent breakthroughs in AI-generated music open the door for new forms for
co-creation and co-creativity. We present Artificial$.\!$fm, a proof-of-concept
casual creator that blends AI-music generation, subjective ratings, and
personalized recommendation for the creation and curation of AI-generated
music. Listeners can rate emergent songs to steer the evolution of future
music. They can also personalize their preferences to better navigate the
possibility space. As a "slow creator" with many human stakeholders,
Artificial$.\!$fm is an example of how casual creators can leverage human
curation at scale to collectively navigate a possibility space. It also
provides a case study to reflect on how ownership should be considered in these
contexts. We report on the design and development of Artificial$.\!$fm, and
provide a legal analysis on the ownership of artifacts generated on the
platform.
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