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The comparative synapse: a multiplication free approach to neuro-fuzzy classifiers

机译:比较突触:神经模糊分类器的无乘法方法

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This paper introduces a novel synaptic model called a comparative synapse. Compared with traditional synapses, the new model is multiplication free, being thus attractive for digital implementations. Our results suggests that in an adaptive layer with binary outputs, the synaptic model does not significantly affect the system performances, provided that the input data is properly projected via a nonlinear preprocessor into a separable space. A set of benchmark classification problems were considered to illustrate this property for the case of the comparative synapse and a nonlinear preprocessor defined by fuzzy membership functions.
机译:本文介绍了一种称为比较突触的新型突触模型。与传统的突触相比,新模型是无乘法的,因此对于数字实现具有吸引力。我们的结果表明,在具有二进制输出的自适应层中,只要输入数据通过非线性预处理器正确投影到可分离的空间中,则突触模型不会显着影响系统性能。考虑了一组基准分类问题,以说明比较突触和由模糊隶属函数定义的非线性预处理器的情况下的此属性。

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