Improving learning rate of neural tree networks using thermal perceptrons

Ananth Sankar, R. Mammone
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引用次数: 2

Abstract

A new neural network called the neural tree network (NTN) is a combination of decision trees and multi-layer perceptrons (MLP). The NTN grows the network as opposed to MLPs. The learning algorithm for growing NTNs is more efficient that standard decision tree algorithms. Simulation results have shown that the NTN is superior in performance to both decision trees and MLPs. A new NTN learning algorithm is proposed based on the thermal perceptron algorithm. It is shown that the new algorithm greatly increases the speed of learning of the NTN and attains similar classification performance as the previously used algorithm.<>
利用热感知器提高神经树网络的学习率
一种新的神经网络称为神经树网络(NTN),它是决策树和多层感知器(MLP)的结合。与mlp相反,NTN可以扩展网络。该算法比标准决策树算法更有效。仿真结果表明,NTN在性能上优于决策树和mlp。在热感知器算法的基础上提出了一种新的NTN学习算法。结果表明,新算法大大提高了NTN的学习速度,并获得了与之前使用的算法相似的分类性能
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