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DYNAMIC PROGRAMMING ALGORITHM FOR TRAINING FUNCTIONAL NETWORKS

机译:训练功能网络的动态编程算法

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The paper proposes a dynamic programming algorithm for training of functional networks. The algorithm considers each node as a state. The problem is formulated as finding the sequence of states which minimizes the sum of the squared errors approximation. Each node is optimized with regard to its corresponding neural functions and its estimated neuron functions. The dynamic programming algorithm tries to find the best path from the final layer nodes to the input layer which minimizes an optimization criterion. Finally, in the pruning stage, the unused nodes are deleted. The output layer can be taken as a summation node using some linearly independent families, such as, polynomial, exponential, Fourier,...etc. The algorithm is demonstrated by two examples and compared with other common algorithms in both computer science and statistics communities.
机译:提出了一种用于功能网络训练的动态规划算法。该算法将每个节点视为一个状态。该问题被公式化为寻找最小化平方误差近似值之和的状态序列。关于每个节点的相应神经功能和估计的神经元功能,对其进行了优化。动态编程算法试图找到从最终层节点到输入层的最佳路径,从而使优化标准最小化。最后,在修剪阶段,删除未使用的节点。可以使用一些线性独立的族(例如多项式,指数,傅立叶等)将输出层作为求和节点。该算法由两个示例演示,并与计算机科学和统计领域的其他常见算法进行了比较。

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