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- Loss-Based Cross-Validated Deletion/Substitution/Addition Algorithms in Estimation
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- Article comments:
- Published 2004 as "The deletion/substitution/addition algorithm in loss function based estimation" in Journal of Statistical Methods in Molecular Biology 3(1), article 18.
- Abstract:
- In van der Laan and Dudoit (2003) we propose and theoretically study
a unified loss function based statistical methodology, which provides
a road map for estimation and performance assessment. Given a parameter
of interest which can be described as the minimizer of the population mean
of a loss function, the road map involves as important ingredients
cross-validation for estimator selection and minimizing over subsets of
basis functions the empirical risk of the subset-specific estimator of the
parameter of interest, where the basis functions correspond to a
parameterization of a specified subspace of the complete parameter space.
In this article we first review this approach. Then we propose a general
deletion/substitution/addition algorithm for minimizing over subsets
of variables (e.g., basis functions) the empirical risk of subset-specific
estimators of the parameter of interest. In particular, in the regression
context, this algorithm corresponds to minimizing over subsets of
variables the sum of squared residuals of the subset-specific linear
regression estimator. This algorithm provides us with a new class of
loss-based cross-validated algorithms in prediction of univariate and
multivariate outcomes, conditional density and hazard estimation, and we
generalize it to censored outcomes such as survival. In the context of
regression, using polynomial basis functions, we study the properties of the
deletion/substitution/addition algorithm in simulations and apply the
method to detect binding sites in yeast gene expression experiments.
- Subject Area:
- Computation, Statistical Models, Statistical Theory and Methods, Survival Analysis
- Suggested Citation:
- Sandra E. Sinisi and Mark J. van der Laan,
"Loss-Based Cross-Validated Deletion/Substitution/Addition Algorithms in Estimation"
(March 2004).
U.C. Berkeley Division of Biostatistics Working Paper Series.
Working Paper 143.
http://www.bepress.com/ucbbiostat/paper143