Title of article
A semi-parametric approach to dual modeling when no replication exists
Author/Authors
Robinson، نويسنده , , Timothy J. and Birch، نويسنده , , Jeffrey B. and Alden Starnes، نويسنده , , B.، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2010
Pages
10
From page
2860
To page
2869
Abstract
In many applications, it is of interest to simultaneously model the mean and variance of a response when no replication exists. Modeling the mean and variance simultaneously is commonly referred to as dual modeling. Parametric approaches to dual modeling are popular when the underlying mean and variance functions can be expressed explicitly. Quite often, however, nonparametric approaches are more appropriate due to the presence of unusual curvature in the underlying functions. In sparse data situations, nonparametric methods often fit the data too closely while parametric estimates exhibit problems with bias. We propose a semi-parametric dual modeling approach [Dual Model Robust Regression (DMRR)] for non-replicated data. DMRR combines parametric and nonparametric fits resulting in improved mean and variance estimation. The methodology is illustrated with a data set from the literature as well as via a simulation study.
Keywords
Variance modeling , Model mis-specification , Mixing , Asymptotic convergence , Robustness
Journal title
Journal of Statistical Planning and Inference
Serial Year
2010
Journal title
Journal of Statistical Planning and Inference
Record number
2220909
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