位置:成果数据库 > 期刊 > 期刊详情页
多元线性回归模型的增量算法
  • 期刊名称:北京航空航天大学学报(自然科学版)
  • 时间:2014
  • 页码:1487-1491
  • 分类:O212[理学—概率论与数理统计;理学—数学]
  • 作者机构:[1]北京航空航天大学经济管理学院,北京100191
  • 相关基金:国家自然科学基金资助项目(71031001,71420107025); 北京航空航天大学博士研究生创新基金资助项目(YWF-14-YJSY-027); 国家863计划资助项目(SS2014AA012303)
  • 相关项目:经济管理领域中的高维复杂数据分析理论与应用
中文摘要:

现有区间数据分析的方法通常假设数据在某一区间上服从均匀分布,这在实际数据分析中通常是不成立的.针对此问题,在原始数据来源于连续分布的简单假设下,利用经过分布函数变换后的随机变量服从(0,1)上的均匀分布,分别采用经验分布函数和核估计对原始数据的分布函数进行估计.基于此设计变换,对变换后的数据进行均匀分布的假设检验,通过检验后进行后续的区间数据分析,使得均匀分布的假定得以成立,保证了统计理论上的严谨性.数据模拟结果表明,将经验分布函数变换后的数据作为研究对象,进行区间数据分析,所得到的统计建模结果更加合理且具有较强的解释力.

英文摘要:

Uniform distribution in some closed or tight interval is a basic assumption in the literature about interval data analysis,which is difficult to satisfy in real data processing. To solve this problem,the empirical cumulative distribution function( ECDF) and kernel estimation of cumulative distribution were studied,on the assumption that the date were from some continuous distribution. Based on ECDF and kernel estimation,a transformation to obtain new data was designed,which was uniformly distributed in theory. Then whether the distribution of transformed data was uniform distribution was tested. If the null hypothesis was not rejected,traditional methods in the field of interval data analysis could be utilized based on transformed data.The transform and the test were both for guaranteeing the transformed data were from some uniform distribution. Both simulation and real data example show that,the results based on ECDF and kernel estimation transformed data are more reasonable and with strong explanatory ability.

同期刊论文项目
期刊论文 106 会议论文 25 著作 8
同项目期刊论文