Missing Data Samples: Systematization And Conducting Methods - A Review
View/ Open
Date
2021Authors
Ilić, Ivana D.
Višnjić, Jelena M.
Randjelović, Branislav M.
Mitić, Vojislav V.
Metadata
Show full item recordAbstract
This paper investigates the phenomenon of the incomplete data samples by analyzing their structure and also resolves the necessary procedures regularly used in missing data analysis. The research gives a crucial perceptive of the techniques and mechanisms needed in dealing with missing data issues in general. The motivation for writing this brief overview of the topic lies in the fact that statistical researchers
inevitably meet missing data in their analysis. The authors examine the applicability of regular approaches for handling the missing data situations. Based on several previously published results, the authors provide an example of the incomplete data sample model that can be implemented when confronting with speci c missing data patterns.
M category
M52openAccess
M52
openAccess
Collections
The following license files are associated with this item: