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

机译:γ型收缩估计在伽马回归模型中,具有前列腺癌数据的应用

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摘要

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.
机译:伽玛回归适用于寿命测试,预测癌症发病率,基因组学,降雨预测,实验设计和质量控制等几个领域。 Gamma回归模型允许单调,在生存模型中没有持续的危险。由于Gamma回归的广泛适用性,我们提出了一些新颖的和改进的方法来估计伽马回归模型的系数。我们将不受限制的最大可能性(ML)估计和由线性假设限制的估算值结合起来,我们呈现了Stein型收缩估计(SES)。然后,我们为SES开发渐近理论,获得渐近二次风险。此外,我们在Monte Carlo模拟中以模拟的相对效率来研究估算器的性能。从我们的研究中显而易见的是,所提出的SES优于通常的ML估算。此外,一些表格和图形表示作为我们断言的证据。这项研究终于通过评估我们估计的真正前列腺癌数据的表现来结束。

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