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粗糙集属性约简判别分析方法及其应用

Discrimination Method of Rough Set Attribute Reduction and Its Applications

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【作者】 刘宏杰冯博琴李文捷吕焕通

【Author】 Liu Hongjie1,2,Feng Boqin1,Li Wenjie 2,Lü Huantong3(1.School of Electronics and Information Engineering, Xi′an Jiaotong University,Xi′an 710049,China;2.Geophysical Research Institute,Research Institute of Exploration and Development,PetroChina Xinjiang Oilfield Company,Urumqi 830013,China;3.PetroChina Xinjiang Oilfield Company,Karamay 834000,China)

【机构】 西安交通大学电子与信息工程学院新疆油田公司研究院地球物理所究所新疆油田公司 710049西安830013乌鲁木齐710049西安830013乌鲁木齐834000克拉玛依

【摘要】 为了解决统计逐步判别分析法存在的问题,提出了一种基于粗糙集属性约简的统计判别分析方法.首先采用粗糙集属性约简进行变量筛选,这样可充分利用粗糙集属性约简不需要属性分布的先验信息这一特点,再对所选择的变量进行Bayes判别分析训练,建立判别函数或相应的后验概率函数,以解决选择变量过程中存储量较大且检验变量的重要性总体服从正态分布这一主观性假设等问题.通过对油气储层数据的实际分析表明,所提方法不仅易于实施,而且检验数据集的判别准确率高于统计逐步判别分析法,同时可节省预测成本,提高预测速度.

【Abstract】 In order to overcome some shortcomings of the statistical stepwise discrimination method,a new discrimination method based on rough set attribute reduction is proposed,in which the attribute reduction of rough set is used to select important discriminating variables by sufficiently taking advantage of the feature that the attribute reduction of rough set needs no prior information on the distribution.Then,with the selected variables,Bayesian discrimination procedure is used to build the discrimination function or compute the posterior probability so as to solve the problems that the storage size is much bigger and the importance of discriminating variables wholly obey the normal distribution from the subjective assumption in the statistical stepwise discrimination method.Through applying the proposed method to the real-world dataset of reservoir of oil and gas,it is demonstrated that the proposed method not only is easy to be implemented with higher correct discrimination rate,but also can decrease the computational cost and increase the prediction speed.

  • 【文献出处】 西安交通大学学报 ,Journal of Xi’an Jiaotong University , 编辑部邮箱 ,2007年08期
  • 【分类号】TP18
  • 【被引频次】36
  • 【下载频次】786
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