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Morphological Neural Networks with Dendrite Computation: A Geometrical Approach

机译:具有枝晶计算的形态神经网络:几何方法

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Morphological neural networks consider that the information entering a neuron is affected additively by a conductivity factor called synaptic weight. They also suppose that the input channels account with a saturation level mathematically modeled by a MAX or MIN operator. This, from a physiological point of view, appears closer to reality than the classical neural model, where the synaptic weight interacts with the input signal by means of a product; the input channel forms an average of the input signals. In this work we introduce some geometrical aspects of dendrite processing that easily allow visualizing the classification regions, providing also an intuitive perspective of the production and training of the net.
机译:形态学神经网络认为,进入神经元的信息受到称为突触重量的电导率因子的加剧影响。它们还假设输入通道占MAX或MIN运算符的饱和级别。这从生理学的角度来看,比经典神经模型更接近现实,其中突触权重通过产品与输入信号相互作用;输入通道形成输入信号的平均值。在这项工作中,我们介绍了一些枝晶处理的几何方面,即容易允许可视化分类区域,提供了对网的生产和培训的直观的视角。

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