On Improvisation and Open-Endedness: Insights for Experiential AI
Botao 'Amber' Hu

TL;DR
This paper explores how improvisation, a core aspect of human creativity, can inform the development of open-ended AI systems capable of spontaneous, adaptive, and creative behavior in artistic and interactive contexts.
Contribution
It provides insights from expert interviews on improvisation to guide the design of experiential AI that can improvise with qualities like active listening, embracing the unknown, and maintaining intrinsic motivation.
Findings
Identified key qualities of improvisation relevant to AI design.
Connected human improvisational practices to AI system development.
Suggested systemic features for open-ended AI improvisation.
Abstract
Improvisation-the art of spontaneous creation that unfolds moment-to-moment without a scripted outcome-requires practitioners to continuously sense, adapt, and create anew. It is a fundamental mode of human creativity spanning music, dance, and everyday life. The open-ended nature of improvisation produces a stream of novel, unrepeatable moments-an aspect highly valued in artistic creativity. In parallel, open-endedness (OE)-a system's capacity for unbounded novelty and endless "interestingness"-is exemplified in natural or cultural evolution and has been considered "the last grand challenge" in artificial life (ALife). The rise of generative AI now raises the question in computational creativity (CC) research: What makes a "good" improvisation for AI? Can AI learn to improvise in a genuinely open-ended way? In this work-in-progress paper, we report insights from in-depth interviews…
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Taxonomy
TopicsMusic Technology and Sound Studies · Embodied and Extended Cognition · Artificial Intelligence in Games
