Location via proxy:   [ UP ]  
[Report a bug]   [Manage cookies]                
paper cover icon
Outlier detection in gamma regression using Pearson residuals: Simulation and an application

Outlier detection in gamma regression using Pearson residuals: Simulation and an application

AIMS Mathematics
Abdisalam Hassan Muse
Abstract
In data analysis, the choice of an appropriate regression model and outlier detection are both very important in obtaining reliable results. Gamma regression (GR) is employed when the distribution of the dependent variable is gamma. In this work, we derived new methods for outlier detection in GR. The proposed methods are based upon the adjusted and standardized Pearson residuals. Furthermore, a comparison of available and proposed methods is made using a simulation study and a real-life data set. The results of simulation and real-life application the evidence better performance of the adjusted Pearson residual based outlier detection approach.

Abdisalam Hassan Muse hasn't uploaded this paper.

Let Abdisalam Hassan know you want this paper to be uploaded.

Ask for this paper to be uploaded.