Influence diagnostics in Log-Logistic regression model with censored data

Javeria Khaleeq, Muhammad Amanullah, Alanazi Talal Abdulrahman, E. H. Hafez, M. M.Abd El-Raouf

Research output: Contribution to journalArticlepeer-review

2 Scopus citations

Abstract

Log-Logistic regression model arise in several areas of application. Traditional estimation methods for Log-Logistic regression model are sensitive to influential observations. Such bizarre observations can isolate analysis and lead to incorrect conclusions and actions. We suggest local influence diagnostics for identifying unusual observations in Log-Logistic regression model with censored data. The diagnostic methods under the perturbation scheme of case weight, explanatory and response variables are derived. Computational statistical measures are proposed that make the procedures practicable. Moreover, Generalized Cook's distance and One-step Newton-Raphson method are also studied. Finally, a real data set and simulation study is presented. The results of illustrative example and simulation scheme clearly reveal that the proposed diagnostic methods under normal curvature perform better than others.

Original languageEnglish
Pages (from-to)2230-2241
Number of pages12
JournalAlexandria Engineering Journal
Volume61
Issue number3
DOIs
StatePublished - Mar 2022
Externally publishedYes

Keywords

  • Censoring
  • Generalized Cook's Distance
  • Local influence
  • Log-Logistic distribution
  • Perturbation

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