Abstract:Segment procedure neural network model and its learning algorithm are studied in this paper. A novel procedure neural network is proposed based on procedure neural networks. The algorithm is also proposed in the cases of knowing and unknowing the subsection desire outputs, which aims at simulating the procedure of subsection object programming and estimation system. Finally, an application example of undergraduate integration estimation system is presented and simulation results illustrate the efficiency of the model and the algorithm.
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