Inductive model evolved from data

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Inductive model evolved from data Reactions of ensemble models differ where not trained well (training data present just in certain areas of the input space). We can generate math formulas from inductive models but they are too complicated for complex data. Better approach is to visualize their reactions. http://neuron.felk.cvut.cz/game/ http://cig.felk.cvut.cz

Genetic algorithm locates interesting areas in multi-dimensional input space When model is too complicated its behavior can be visualized