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Learning and generalization of noisy mappings using a modified PROBART neural network

机译:使用改进的PROBART神经网络学习和概括噪声映射

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Incremental function approximation using the PROBART neural network offers many advantages over conventional feedforward networks. These include dynamic node allocation based on the complexity of the function approximation task, guaranteed convergence, and the ability to handle noise in the training data. However, the PROBART network does not generalize very well to untrained data. In this paper, a modified PROBART is proposed to overcome this deficiency. This modification replaces the winner-take-all mode of prediction of the PROBART with a distributed mode of prediction. This distributed mode enables several neurons to cooperate during prediction and, thus, provides better generalization capabilities even in noisy conditions. Computer simulations are conducted to evaluate the performance of the modified PROBART neural network using three benchmark nonlinear function approximation tasks. The prediction accuracy of the modified PROBART network compares favorably to the PROBART, fuzzy ARTMAP, and ART-EMAP networks for all these tasks.
机译:与传统的前馈网络相比,使用PROBART神经网络进行的增量函数逼近具有许多优势。其中包括根据函数逼近任务的复杂性进行动态节点分配,保证收敛性以及处理训练数据中噪声的能力。但是,PROBART网络不能很好地推广到未经训练的数据。在本文中,提出了一种改进的PROBART以克服这一缺陷。此修改将PROBART的赢家通吃的预测模式替换为分布式的预测模式。这种分布式模式使多个神经元可以在预测过程中进行协作,因此即使在嘈杂的条件下也可以提供更好的泛化能力。使用三个基准非线性函数逼近任务,进行了计算机仿真,以评估改进的PROBART神经网络的性能。对于所有这些任务,修改后的PROBART网络的预测精度均优于PROBART,模糊ARTMAP和ART-EMAP网络。

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