Prototype Discovery using Quality-Diversity

  title={Prototype Discovery using Quality-Diversity},
  author={A. Hagg and Alexander Asteroth and T. B{\"a}ck},
  • A. Hagg, Alexander Asteroth, T. Bäck
  • Published in PPSN 2018
  • Computer Science
  • An iterative computer-aided ideation procedure is introduced, building on recent quality-diversity algorithms, which search for diverse as well as high-performing solutions. Dimensionality reduction is used to define a similarity space, in which solutions are clustered into classes. These classes are represented by prototypes, which are presented to the user for selection. In the next iteration, quality-diversity focuses on searching within the selected class. A quantitative analysis is… CONTINUE READING

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