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Energy function construction and implementation for stock exchange prediction NNs

机译:证券交易所预测NNS的能量函数建设与实施

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Neural networks (NN), with their parallel processing power, can be used as a tool to forecast stock exchange events (SEE), as a sub-domain of time-series (TS) forecasting. For the final product of SEE forecasts, other external economical factors have to be taken also into consideration and to be combined with the pure TS forecast. In this paper we present the energy function construction and implementation for SEE prediction. We focus on the mathematical deductions of the energy function and on the error minimization procedures. We present also some comparative results of our method, based on Lyapunov (also called infinite) norm, compared to the classical backpropagation method (BP), and to the random walk generator. We discuss some further optimisation of the system.
机译:具有并行处理能力的神经网络(NN)可以用作预测证券交易所事件(参见)的工具,作为时间序列(TS)预测的子域。对于预测的最终产品,还必须考虑其他外部经济因素,并与纯TS预测相结合。在本文中,我们介绍了能量函数构造和见面预测的实现。我们专注于能量函数的数学扣除和最小化过程的数学扣除。与经典的背部化方法(BP)和随机步行发生器相比,我们还存在我们方法的一些比较结果,基于Lyapunov(也称为无限)符号。我们讨论了系统的进一步优化。

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