首页> 外文会议>International Conference on Computing, Mathematics and Statistics >A Comparative Study of Outlier Detection Methods in Poisson Regression
【24h】

A Comparative Study of Outlier Detection Methods in Poisson Regression

机译:泊松回归中异常检测方法的比较研究

获取原文

摘要

Regression models using count data have a wide range of applications in engineering, econometrics, medicine and social sciences. Poisson regression models are widely used in the analysis and prediction of counts on potential independent variables. However, the presence of outliers can lead to inflated error rates and substantial distortions of parameter and statistic estimates. In this study, three methods of identification of outlier are used which are DFFITS, DFBETAS and Cook's Square Distance (CD). The objective of the study is to investigate on the performance of the three detection methods (DFFITS, DFBETAS, and CD) in Poisson regression using simulation in R. A simulation study was performed with various regression conditions which include different number of predictors, sample sizes and percentage of outliers in the X-space, Y-pace and both X-and Y-space. The best outlier detection method is the one that can detect the most number of outliers. Results show that for outliers in X-space and Y-space, DFFITS performs better in detecting outliers for all sample sizes with low percentage of outliers while DFBETAS performs better for most of samples sizes with high percentage of outliers. In both X-and Y-space, the best method in detecting outliers for small sample size with low percentage of outliers is DFFITS. However, for large sample size, CD and DFBETAS perform better in detecting low and high percentage of outliers, respectively. Similar results were obtained when these methods were applied to a real data set.
机译:使用计数数据的回归模型在工程,经济学,医学和社会科学中具有广泛的应用。泊松回归模型广泛用于潜在独立变量的计数分析和预测。然而,异常值的存在可能导致膨胀误差率和大量的参数和统计估计的扭曲。在本研究中,使用三种识别异常值的方法,这些方法是DFFITS,DFBETAS和COOK的方距(CD)。该研究的目的是研究使用R的仿真在泊松回归中的三种检测方法(DFFITS,DFBETA和CD)的性能。通过各种回归条件进行仿真研究,包括不同数量的预测器,样本尺寸X空间,Y-Pace和X-and Y空间中的异常值百分比。最好的异常检测方法是可以检测到最多数量的异常值的异常检测方法。结果表明,对于X空间和Y空间的异常值,DFFITS在检测所有样本大小的异常尺寸的异常值中表现更好,而DFBetas对大多数样本对异常值的大部分进行更好。在X-and Y空间中,检测具有低百分比异常值的小样本大小的异常值的最佳方法是DFFITS。然而,对于大型样本大小,CD和DFBetas分别在检测到低百分比的异常值时更好地表现更好。当将这些方法应用于真实数据集时,获得了类似的结果。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号