DocumentCode :
2841016
Title :
Uncertainty bounds for parameter identification with small sample sizes
Author :
Spall, James C.
Author_Institution :
Appl. Phys. Lab., Johns Hopkins Univ., Laurel, MD, USA
Volume :
4
fYear :
1995
fDate :
13-15 Dec 1995
Firstpage :
3504
Abstract :
Consider the problem of determining uncertainty bounds for an M-estimate of a parameter vector from (generally) non-i.i.d. data (M-estimates are those obtained as the solution of a set of equations; maximum likelihood estimates are perhaps the most common type). Calculating uncertainty bounds requires information about the distribution of the estimate. It is well known that M-estimates typically have an asymptotic normal distribution. However, because of their generally complex nonlinear (and implicitly defined) structure, very little is usually known about the finite-sample distribution. This paper presents a method for characterizing the distribution of an M-estimate when the sample size is small. The approach works by comparing the actual (unknown) distribution of the estimate with a closely related known distribution. Some discussion and analysis are included that compare the approach here with the well-known bootstrap and saddlepoint methods. Theoretical justification and an illustration of the approach in a signal-plus-noise estimation problem are presented. This illustrative problem arises in many contexts, including random effects modeling (“unbalanced” case), the problem of combining several independent estimates, Kalman filter-based modeling, small area survey analysis, and quantile calculation for projectile accuracy analysis
Keywords :
parameter estimation; Kalman filter-based modeling; M-estimate; asymptotic normal distribution; bootstrap method; complex nonlinear structure; finite-sample distribution; implicitly defined structure; maximum likelihood estimates; non-i.i.d. data; parameter identification; parameter vector; projectile accuracy analysis; quantile calculation; random effects modeling; saddlepoint method; signal-plus-noise estimation problem; small area survey analysis; small sample sizes; uncertainty bounds; Context modeling; Gaussian distribution; Laboratories; Maximum likelihood estimation; Nonlinear equations; Parameter estimation; Physics; State estimation; Uncertainty; Yield estimation;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Decision and Control, 1995., Proceedings of the 34th IEEE Conference on
Conference_Location :
New Orleans, LA
ISSN :
0191-2216
Print_ISBN :
0-7803-2685-7
Type :
conf
DOI :
10.1109/CDC.1995.479128
Filename :
479128
Link To Document :
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