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引用次数: 3
摘要
粗糙集理论是一种成熟的处理不一致数据的工具。使用智能数据分析工具即粗糙集理论,可以很容易地进行属性之间的依赖关系、它们的重要性和评估。本文的目的是修改A.E Hassanien等人基于粗糙集方法的现有股票市场预测模型,构建一个生成较少决策规则的数据模型。并将所提出的数据模型得到的结果与知名软件工具Rough set Exploration system 2.2(简称RSES 2.2)进行了比较。结果表明,与RSES 2.2相比,该模型具有更高的整体准确率,生成的规则更紧凑、更少。使用粗糙混淆矩阵来评价预测的分类性能。该数据模型的有效性在由科威特证券交易所交易的股票的日常运动组成的数据集上得到了证明,该数据集跨越了五年的时间。
An improved rough set data model for stock market prediction
Rough set theory is a well established tool for dealing with inconsistent data. The dependencies among the attributes, their significance, and evaluation can easily be performed using intelligent data analysis tool viz., rough set theory. The objective of this article is to modify the existing stock market predictive model based on rough set approach by A.E Hassanien et al. and to construct a data model that would generate fewer number of decision rules. Moreover the results obtained from the proposed data model are compared with well-known software tool Rough set Exploration system 2.2 popularly known as RSES 2.2. It is shown that the proposed model has a higher overall accuracy rate and generates more compact and fewer rules than RSES 2.2. Rough confusion matrix is used to evaluate the predicted classification performances. The effectiveness of this data model is demonstrated on data set consisting of daily movements of a stock traded in Kuwait Stock Exchange spanning over a period of five years.