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Rough Set Generating Prediction Rules for Stock Price Movement

机译:粗糙集生成股票价格运动预测规则

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This paper presents rough sets generating prediction rules scheme for stock price movement. The scheme was able to extract knowledge in the form of rules from daily stock movements. These rules then could be used to guide investors whether to buy, sell or hold a stock. To increase the efficiency of the prediction process, rough sets with Boolean reasoning discretization algorithm is used to discretize the data. Rough set reduction technique is applied to find all the reducts of the data. Finally, rough sets dependency rules are generated directly from all generated reducts. Rough confusion matrix is used to evaluate the performance of the predicted reducts and classes. A comparison between the obtained results using rough sets with decision tree and neural networks algorithms have been made. Rough sets show a higher overall accuracy rates reaching over 97% and generate more compact rules.
机译:本文提出了股票价格运动的粗糙集预测规则方案。该计划能够以每日股票运动的规则形式提取知识。然后,这些规则可用于指导投资者是否购买,销售或持有股票。为了提高预测过程的效率,使用布尔推理离散化算法的粗糙集用于离散数据。应用粗糙集减少技术来查找数据的所有减少。最后,直接生成粗糙设置依赖关系规则从所有生成的还原。粗糙的混淆矩阵用于评估预测的还原和类的性能。已经进行了使用粗糙集与决策树和神经网络算法的获得结果的比较。粗糙集显示出更高的总体精度率超过97%并产生更紧凑的规则。

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