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Enhanced Neural Networks and Medical Imaging

机译:增强型神经网络和医学影像

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This paper shows that the application of Enhanced Neural Networks when dealing with classification problems is more powerfull than classical Multilayer Perceptrons. These enhanced networks are able to approximate any function f(x) using a n-degree polinomial defined by the weights in the connections. Also, the addition of hidden layers in the neural architecture, increases the degree of the output equation associated to output units. So, surfaces generated by these networks are really complex and theoretically they could classify any pattern set with a number n of hidden layers. Results concerning medical imaging, breast cancer diagnosis, are studied along the paper. The proposed architecture improves obtained results using classical networks, due to the implicit data transformation computed as part of the neural architecture.
机译:本文表明,增强型神经网络在处理分类问题时的应用比经典的多层感知器更强大。这些增强的网络能够使用由连接权重定义的n度策略来近似任何函数f(x)。而且,神经体系结构中隐藏层的添加增加了与输出单元关联的输出方程的程度。因此,由这些网络生成的曲面确实非常复杂,并且从理论上讲,它们可以对具有n个隐藏层的任何图案集进行分类。本文将研究有关医学成像,乳腺癌诊断的结果。由于将隐式数据转换作为神经体系结构的一部分进行了计算,因此所提出的体系结构使用经典网络改进了获得的结果。

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