Title :
Mean and variance of implicitly defined biased estimators (such as penalized maximum likelihood): applications to tomography
Author :
Fessler, Jeffrey A.
Author_Institution :
Dept. of Internal Med., Michigan Univ., Ann Arbor, MI, USA
fDate :
3/1/1996 12:00:00 AM
Abstract :
Many estimators in signal processing problems are defined implicitly as the maximum of some objective function. Examples of implicitly defined estimators include maximum likelihood, penalized likelihood, maximum a posteriori, and nonlinear least squares estimation. For such estimators, exact analytical expressions for the mean and variance are usually unavailable. Therefore, investigators usually resort to numerical simulations to examine the properties of the mean and variance of such estimators. This paper describes approximate expressions for the mean and variance of implicitly defined estimators of unconstrained continuous parameters. We derive the approximations using the implicit function theorem, the Taylor expansion, and the chain rule. The expressions are defined solely in terms of the partial derivatives of whatever objective function one uses for estimation. As illustrations, we demonstrate that the approximations work well in two tomographic imaging applications with Poisson statistics. We also describe a “plug-in” approximation that provides a remarkably accurate estimate of variability even from a single noisy Poisson sinogram measurement. The approximations should be useful in a wide range of estimation problems
Keywords :
emission tomography; functions; least squares approximations; maximum likelihood estimation; medical image processing; statistical analysis; stochastic processes; Poisson statistics; Taylor expansion; approximate expressions; biased estimators; chain rule; estimation problems; exact analytical expressions; implicit function theorem; maximum a posteriori estimation; mean; noisy Poisson sinogram measurement; nonlinear least squares estimation; numerical simulations; objective function; partial derivatives; penalized maximum likelihood; plug-in approximation; signal processing problems; tomographic imaging applications; tomography; unconstrained continuous parameters; variance; Analysis of variance; Image processing; Least squares approximation; Least squares methods; Maximum likelihood estimation; Numerical simulation; Signal processing; Taylor series; Tomography; Vectors;
Journal_Title :
Image Processing, IEEE Transactions on