A new C++ implemented feed forward neural network simulator
نویسندگان
چکیده
This paper presents the implementation of a simulator application for feed forward neural networks which was made in Qt application framework. The paper demonstrates the object oriented design and the performance of the software. The main topics cover the class organization and some test results where the Matlab neural network toolbox was used as reference. Keywords— Neural network; Function approximation, C++; Qt; Object oriented design
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