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Structural Learning of Neural Networks for Forecasting Stock Prices

机译:神经网络的结构学习预测股票价格

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摘要

Generally, a neural network spends much computation time and cost in forecasting the value and movement of a stock. The reason is because a neural network requires exponential time in computation according to the number of units in a hidden layer. The objective of the paper is to optimally build a neural network through structurally learning. The results enable us to reduce the computational time and cost as well as to understand the structure more easily. In the paper the method is employed in forecasting the price movement of a stock. The optimization of the network by the structured learning is evaluated based on its real use.
机译:通常,神经网络在预测股票的价值和移动时会花费大量的计算时间和成本。原因是因为神经网络根据隐藏层中的单元数在计算中需要指数时间。本文的目的是通过结构学习来最佳地构建神经网络。结果使我们能够减少计算时间和成本,并且更容易理解结构。在本文中,该方法用于预测股票的价格变动。基于结构化学习的网络优化是基于其实际使用进行评估的。

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