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Integrating expert modules by local receptive neural network

机译:通过局部接受神经网络集成专家模块

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In this paper, the task of integrating conflicting experts' opinions is achieved through a training of local receptive gating network using backpropagation. The front layers of the gating network consist of local-receptive fields which form feature maps of the input that enable modulations to experts' output. The resulting network achieves accurate modelling of the solution mapping through the efficient combination of existing experts. Experimental results on a histogram thresholding problem show the superior performance of the modular network over classical algorithms.
机译:在本文中,通过使用反向传播对本地接收门控网络进行训练,可以实现整合冲突专家意见的任务。选通网络的顶层由局部接收场组成,这些场形成输入的特征图,从而可以对专家的输出进行调制。最终的网络通过有效结合现有专家,实现了解决方案映射的准确建模。直方图阈值问题的实验结果表明,模块化网络优于经典算法。

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