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Embodiment and Computational Creativity

2021-07-02 10:18:55
Christian Guckelsberger, Anna Kantosalo, Santiago Negrete-Yankelevich, Tapio Takala

Abstract

We conjecture that creativity and the perception of creativity are, at least to some extent, shaped by embodiment. This makes embodiment highly relevant for Computational Creativity (CC) research, but existing research is scarce and the use of the concept highly ambiguous. We overcome this situation by means of a systematic review and a prescriptive analysis of publications at the International Conference on Computational Creativity. We adopt and extend an established typology of embodiment to resolve ambiguity through identifying and comparing different usages of the concept. We collect, contextualise and highlight opportunities and challenges in embracing embodiment in CC as a reference for research, and put forward important directions to further the embodied CC research programme.

Abstract (translated)

URL

https://arxiv.org/abs/2107.00949

PDF

https://arxiv.org/pdf/2107.00949.pdf


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