Enhanced Innovation: A Fusion of Chance Discovery and Evolutionary Computation to Foster Creative Processes and Decision Making

Human-based genetic algorithms are powerful tools for or- ganizational modeling. If we enhance them using chance discovery tech- niques, we obtain an innovative approach for computer-supported col- laborative work. Moreover, such a user-centered approach fuses human and computer partners in a natural way. This paper presents a first test, as well as analyzes the obtained results, of real human and computer collaboration powered by the fusion of human-based genetics algorithms and chance discovery.

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