TY - THES U1 - Dissertation / Habilitation A1 - Hagg, Alexander T1 - Discovering the preference hypervolume: an interactive model for real world computational co-creativity N2 - In this thesis it is posed that the central object of preference discovery is a co-creative process in which the Other can be represented by a machine. It explores efficient methods to enhance introverted intuition using extraverted intuition's communication lines. Possible implementations of such processes are presented using novel algorithms that perform divergent search to feed the users' intuition with many examples of high quality solutions, allowing them to take influence interactively. The machine feeds and reflects upon human intuition, combining both what is possible and preferred. The machine model and the divergent optimization algorithms are the motor behind this co-creative process, in which machine and users co-create and interactively choose branches of an ad hoc hierarchical decomposition of the solution space. The proposed co-creative process consists of several elements: a formal model for interactive co-creative processes, evolutionary divergent search, diversity and similarity, data-driven methods to discover diversity, limitations of artificial creative agents, matters of efficiency in behavioral and morphological modeling, visualization, a connection to prototype theory, and methods to allow users to influence artificial creative agents. This thesis helps putting the human back into the design loop in generative AI and optimization. KW - Co-creative processes KW - Dimensionality reduction KW - Generative Models KW - Computational creativity KW - Divergent optimization KW - Quality diversity KW - Clustering KW - Surrogate-assistance KW - Evolutionary optimization KW - Human-Computer Interaction UR - https://hdl.handle.net/1887/3245521 SP - 201 S1 - 201 ER -