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CONSTRAINED FORMULATIONS AND ALGORITHMS FOR PREDICTING STOCK PRICES BY RECURRENT FIR NEURAL NETWORKS

机译:递归FIR神经网络预测库存价格的约束公式和算法

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摘要

In this paper, we develop a new constrained artificial-neural-network (ANN) formulation and the associated learning algorithm for predicting stock prices, a difficult time-series prediction problem. We characterize daily stock prices as a noisy non-stationary time series and identify its predictable low-frequency components. Using a recurrent finite impulse response ANN, we formulate the learning problem as a constrained optimization problem, develop constraints for incorporating cross validations, and solve the learning problem using algorithms based on the theory of extended saddle points for nonlinear constrained optimization. Finally, we illustrate our prediction results on ten stock-price time series. Our main contributions in this paper are the channel-specific low-pass filtering of noisy time series obtained by wavelet decomposition, the transformation of the low-pass signals to improve their stationarity, and the incorporation of constraints on cross validation that can improve the accuracy of predictions. Our experimental results demonstrate good prediction accuracy and annual returns.
机译:在本文中,我们开发了一种新的约束人工神经网络(ANN)公式和相关的学习算法来预测股票价格,这是一个困难的时间序列预测问题。我们将每日股票价格描述为嘈杂的非平稳时间序列,并确定其可预测的低频成分。使用递归有限脉冲响应人工神经网络,我们将学习问题公式化为约束优化问题,为合并交叉验证开发约束,并使用基于扩展鞍点理论的非线性约束优化算法解决学习问题。最后,我们用十个股价时间序列说明了我们的预测结果。我们在本文中的主要贡献是通过小波分解获得的对噪声时间序列的特定于通道的低通滤波,对低通信号进行变换以提高其平稳性以及在交叉验证中加入约束条件以提高准确性预测。我们的实验结果证明了良好的预测准确性和年度收益。

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