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Nonadditive Grey Single-layer Perceptron With Choquet Integral For Pattern Classification Problems Using Genetic Algorithms

机译:具有遗传算法的模式分类问题的非加性灰色单层感知器与Choquet积分

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Since the output of a single-layer perceptron can be interpreted as the synthetic evaluation of the relationship between the input pattern and one class for two-class pattern classification problems, this paper proposes a novel perceptron with nonadditive property, named the grey single-layer perceptron, by measuring the grades of relationship between an input pattern and this class for individual attributes with the grey relational analysis. A nonlinear integral, namely the Choquet integral, with respect to the fuzzy measure serves as an activation function of a neuron to synthesize the performance values owing to the interaction among attributes. Moreover, the connection weights are interpreted as the degrees of importance of the respective input signals and can be determined by the genetic algorithm-based learning algorithm. The experimental results further demonstrate that the generalization ability of the proposed grey single-layer perceptron is better than or comparable to that of other fuzzy or non-fuzzy classification methods.
机译:由于单层感知器的输出可以解释为针对两类模式分类问题的输入模式与一类之间关系的综合评估,因此本文提出了一种具有非加性的新型感知器,称为灰色单层感知器,通过灰色关联分析测量单个属性的输入模式与此类之间的关系等级。关于模糊量度的非线性积分,即Choquet积分,由于属性之间的相互作用而充当神经元的激活函数,以合成性能值。此外,连接权重被解释为各个输入信号的重要程度,并且可以由基于遗传算法的学习算法确定。实验结果进一步表明,提出的灰色单层感知器的泛化能力优于或可比其他模糊或非模糊分类方法。

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