Stock market time series data mining based on regularized neural network and rough set

Xiao-ye Wang, Zheng-ou Wang
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引用次数: 17

Abstract

Presents a method of stock market time series data mining, which combines a regularized neural network with rough sets. The process includes preprocessing of a time series database and data mining. The preprocessing cleans and filters time series. Then, we partition the time series into a series of static patterns, which is based on the trend (i.e., increasing or decreasing) of the closing price. An information table is formed by the most important predictable attributes and target attributes identified from each pattern. The regularized neural network (RNN) is used to study and predict the data. Rough sets can extract rule knowledge in the trained neural network that can be used to predict the time series behavior in the future. The method combines the high generalization faculty of the regularized neural network and the rule reduction capability of rough sets. An experiment demonstrates the effectiveness of the algorithm.
基于正则化神经网络和粗糙集的股票市场时间序列数据挖掘
提出了一种将正则化神经网络与粗糙集相结合的股票市场时间序列数据挖掘方法。该过程包括时间序列数据库的预处理和数据挖掘。预处理对时间序列进行清洗和过滤。然后,我们根据收盘价的趋势(即上涨或下跌)将时间序列划分为一系列静态模式。信息表由最重要的可预测属性和从每个模式中识别的目标属性组成。采用正则化神经网络(RNN)对数据进行学习和预测。粗糙集可以从训练好的神经网络中提取规则知识,用于预测未来的时间序列行为。该方法结合了正则化神经网络的高泛化能力和粗糙集的规则约简能力。实验证明了该算法的有效性。
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