Zusammenfassung
Oftmals wird vermutet, dass Intelligenz und Kreativität unverbunden (oder sogar einander abträglich) seien; dies ist beim Menschen nicht der Fall. Vor diesen Hintergrund reflektiert dieser Beitrag aus einer psychologischen Perspektive, als wie kreativ eine Künstliche Intelligenz angesehen werden kann. Hierbei werden Aspekte adressiert wie die (domänenübergreifende) Generalisierung einer intelligenzbezogenen Leistung, Problemlösungen in Wahrscheinlichkeiten und der modulare Aufbau eines intelligenten Systems. Es werden Anregungen gegeben für die organisationale Implementation kreativitätsausgerichteter Künstlicher Intelligenzen.
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GPT-3
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Spörrle, M., Hofreiter, S. (2022). Wie kreativ kann Künstliche Intelligenz sein? Eine psychologische Reflexion. In: Landes, M., Steiner, E., Utz, T. (eds) Kreativität und Innovation in Organisationen . Springer Gabler, Berlin, Heidelberg. https://doi.org/10.1007/978-3-662-63117-1_17
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