Straight Forward Constructive Deep Learning Neural Network (SFC-DLNN) Algorithm

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Abstract

Straight Forward Constructive Deep Learning Neural Network (SFC-DLNN) algorithm is a new architecturebased algorithm for artificial neural networks. Rather than simply adjusting the weights in a fixed topology network, SFC-DLNN starts with a minimal topology (perceptron), then builds up their network by gradually trains and adds new nodes one by one, creating multiple layers’ network. Once a unit has been added to the network, the weights of the new architecture are generated. This unit then stands as a permanent detector of features in the network, and a more complex feature space is then created where the data is likely to be linearly separable. The SFC-DLNN algorithm has many advantages over existing ones: it has good learning speed, the network determines its topology size, and the structures it has built is retained after the training stage. We obtain from our built model (SFC-DLNN) an accuracy and specificity of 83:5% from a simulated data set using the uniform distribution. This is not the best but is enough to approve the model prediction capacity
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直接建设性深度学习神经网络(SFC-DLNN)算法
SFC-DLNN算法是一种新的基于体系结构的人工神经网络算法。SFC-DLNN不是简单地调整固定拓扑网络中的权重,而是从最小拓扑(感知机)开始,然后通过逐步训练和逐个添加新节点来构建网络,从而创建多层网络。一旦一个单元被添加到网络中,就会生成新体系结构的权重。然后,这个单元作为网络中特征的永久检测器,然后创建一个更复杂的特征空间,其中的数据可能是线性可分的。SFC-DLNN算法与现有算法相比有很多优点:学习速度快,网络决定其拓扑大小,并且在训练阶段后保留其构建的结构。我们从我们建立的模型(SFC-DLNN)中获得了83:5%的准确度和特异性,从使用均匀分布的模拟数据集。这不是最好的,但足以证明模型的预测能力
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