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Stein-type shrinkage estimators in gamma regression model with application to prostate cancer data.

Saumen MandalReza Arabi BelaghiAkram MahmoudiMinoo Aminnejad
Published in: Statistics in medicine (2019)
Gamma regression is applied in several areas such as life testing, forecasting cancer incidences, genomics, rainfall prediction, experimental designs, and quality control. Gamma regression models allow for a monotone and no constant hazard in survival models. Owing to the broad applicability of gamma regression, we propose some novel and improved methods to estimate the coefficients of gamma regression model. We combine the unrestricted maximum likelihood (ML) estimators and the estimators that are restricted by linear hypothesis, and we present Stein-type shrinkage estimators (SEs). We then develop an asymptotic theory for SEs and obtain their asymptotic quadratic risks. In addition, we conduct Monte Carlo simulations to study the performance of the estimators in terms of their simulated relative efficiencies. It is evident from our studies that the proposed SEs outperform the usual ML estimators. Furthermore, some tabular and graphical representations are given as proofs of our assertions. This study is finally ended by appraising the performance of our estimators for a real prostate cancer data.
Keyphrases
  • prostate cancer
  • monte carlo
  • quality control
  • radical prostatectomy
  • electronic health record
  • squamous cell carcinoma
  • big data
  • working memory
  • papillary thyroid
  • molecular dynamics