%0 Journal Article %T Interpretation Trained Neural Networks Based on Genetic Algorithms %A Safa S. Ibrahim %A Mohamed A.Bamatraf %J International Journal of Artificial Intelligence & Applications %D 2013 %I Academy & Industry Research Collaboration Center (AIRCC) %X In this paper, constructive learning is used to train the neural networks. The results of neural networks areobtained but its result is not in comprehensible form or in a black box form. Our goal is to use animportant and desirable model to identify sets of input variable which results in a desired output value.The nature of this model can help to find an optimal set of difficult input variables. Accuracy. Geneticalgorithms are used as an interpretation of achieving neural network inversion. On the other hand theinversion of neural network enables to find one or more input patterns which satisfy a specific output. Theinput patterns obtained from the genetic algorithm can be used for building neural network systemexplanation facilities. %K Neural Networks %K Genetic Algorithms %K Constructive Learning %K Accuracy. %U http://airccse.org/journal/ijaia/papers/4113ijaia02.pdf