Interval arithmetic backpropagation
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Presents an extension of the backpropagation learning algorithm by using interval arithmetic. The proposed algorithm represents a generalization of backpropagation and contains backpropagation as a particular case. This new algorithm permits the use of training samples and targets which can be indistinct points and intervals. Among the possible applications of this algorithm, the authors report its usefulness to integrate expert's knowledge and experimental samples and also its ability to handle "don't care attributes" in a simple and natural way in comparison with backpropagation. It also adds flexibility to the codification of inputs and outputs.
[1] Hideo Tanaka,et al. An extension of the BP-algorithm to interval input vectors-learning from numerical data and expert's knowledge , 1991, [Proceedings] 1991 IEEE International Joint Conference on Neural Networks.
[2] Hahn-Ming Lee,et al. The handling of don't care attributes , 1991, [Proceedings] 1991 IEEE International Joint Conference on Neural Networks.