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Detecting constructions of nonlinear integral systems from input-output data: an application of neural networks

机译:从输入 - 输出数据检测非线性积分系统的结构:神经网络的应用

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If the input-output relation of a multi-input system can be represented by some kind of integral with respect to a nonnegative monotone set function, which is not necessarily additive, then the construction of the system may be entirely described by the monotone set function. After obtaining input-output data from such a system, the set function can be optimally determined by using a specially designed neural network algorithm.
机译:如果多输入系统的输入输出关系可以由关于非负单调集功能的某种积分表示,这不一定是附加功能,则系统的结构可以完全由单调集功能描述。在从这样的系统获得输入输出数据之后,可以通过使用专门设计的神经网络算法来最佳地确定设定功能。

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