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Set-valued functional neural mapping and inverse system approximation

机译:集值函数神经映射和逆系统逼近

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This work explores set-valued functional neural mapping and inverse system approximation by learning state-regulated multilayer neural networks. Multilayer neural organization is extended to recruit a discrete regulating state in addition to predictive attributes in the input layer. The network mapping regulated over a set of finite discrete states translates a predictor to many targets. Stimuli and responses clamped at visible units are assumed as mixtures of paired predictors and targets sampled from many joined elementary mappings. Unknown regulating states are related to missing exclusive memberships of paired training data to distinct sources. Learning a state-regulated neural network for set-valued mapping approximation involves retrieving unknown exclusive memberships and refining network interconnections. The learning process is realized by a hybrid of mean field annealing and Levenberg-Marquardt methods that simultaneously track expectations of unknown regulating states and optimal interconnections among consecutive layers along a physical-like annealing process. Numerical simulations show the presented learning process well reconstructing many joined elementary functions for set-valued functional mapping and inverse system approximation. (C) 2015 Elsevier B.V. All rights reserved.
机译:这项工作通过学习状态调节的多层神经网络,探索了集值函数神经映射和逆系统逼近。扩展了多层神经组织,以补充输入层中的预测属性以外的离散调节状态。在一组有限离散状态上调节的网络映射将预测变量转换为许多目标。假定固定在可见单位的刺激和响应是成对的预测变量和从许多联合基本映射中采样的目标的混合。未知的调节状态与缺少配对训练数据到不同来源的排他成员关系有关。学习状态调节的神经网络以进行集值映射逼近涉及检索未知的排他成员关系和完善网络互连。学习过程是通过平均场退火和Levenberg-Marquardt方法的混合实现的,该方法同时沿类似物理退火的过程跟踪未知调节状态的期望以及连续层之间的最佳互连。数值模拟表明,所提出的学习过程很好地重构了许多结合的基本函数,用于集值函数映射和逆系统逼近。 (C)2015 Elsevier B.V.保留所有权利。

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