Publication | Open Access
Novice-AI Music Co-Creation via AI-Steering Tools for Deep Generative Models
229
Citations
29
References
2020
Year
Unknown Venue
MusicArtificial IntelligenceCognitive ScienceNovice-ai Music Co-creationEngineeringData ScienceMusic GenerationComputational MusicologyAlgorithmic CompositionInteractive Musical AiGenerative AiArtsMusic ProcessingMusical ContentMusicologySpeech Communication
While generative deep neural networks (DNNs) have demonstrated their capacity for creating novel musical compositions, less attention has been paid to the challenges and potential of co-creating with these musical AIs, especially for novices. In a needfinding study with a widely used, interactive musical AI, we found that the AI can overwhelm users with the amount of musical content it generates, and frustrate them with its non-deterministic output. To better match co-creation needs, we developed AI-steering tools, consisting of Voice Lanes that restrict content generation to particular voices; Example-Based Sliders to control the similarity of generated content to an existing example; Semantic Sliders to nudge music generation in high-level directions (happy/sad, conventional/surprising); and Multiple Alternatives of generated content to audition and choose from. In a summative study (N=21), we discovered the tools not only increased users' trust, control, comprehension, and sense of collaboration with the AI, but also contributed to a greater sense of self-efficacy and ownership of the composition relative to the AI.
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