Stock Price Prediction Based on Procedural Neural Networks

Jiuzhen Liang, Weiguo Song, Mei Wang
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引用次数: 14

Abstract

We present a spatiotemporal model, namely, procedural neural networks for stock price prediction. Compared with some successful traditional models on simulating stock market, such as BNN (backpropagation neural networks, HMM (hidden Markov model) and SVM (support vector machine)), the procedural neural network model processes both spacial and temporal information synchronously without slide time window, which is typically used in the well-known recurrent neural networks. Two different structures of procedural neural networks are constructed for modeling multidimensional time series problems. Learning algorithms for training the models and sustained improvement of learning are presented and discussed. Experiments on Yahoo stock market of the past decade years are implemented, and simulation results are compared by PNN, BNN, HMM, and SVM.
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基于过程神经网络的股票价格预测
我们提出了一个时空模型,即程序神经网络的股票价格预测。与传统的反向传播神经网络(BNN)、隐马尔可夫模型(HMM)和支持向量机(SVM)等成功的股票市场模拟模型相比,程序神经网络模型同步处理空间和时间信息,没有滑动时间窗,这是众所周知的递归神经网络的典型特征。构建了两种不同结构的程序神经网络,用于多维时间序列问题的建模。提出并讨论了用于训练模型和持续改进学习的学习算法。对近十年雅虎股票市场进行了实验,并采用PNN、BNN、HMM和SVM对模拟结果进行了比较。
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