Title :
Geodesic lower bound for parametric estimation with constraints
Author :
Xavier, João ; Barroso, Victor
Author_Institution :
Inst. Superior Tecnico, Lisboa, Portugal
Abstract :
We consider parametric statistical models indexed by embedded submanifolds ⊗ of Rp. This setup occurs in practical applications whenever the parameter of interest θ is known to satisfy a priori deterministic constraints, encoded herein by ⊗. We assume that the submanifold ⊗ is connected and endowed with the Riemannian structure inherited from the ambient space Rp. This turns ⊗ into a metric space in which the distance between points corresponds to the geodesic distance. We discuss a lower bound for the intrinsic variance (that is, measured in terms of the geodesic distance) of unbiased estimators taking values in ⊗. A numerical example involving the special group of orthogonal matrices SO(n, R) is worked out.
Keywords :
differential geometry; matrix algebra; parameter estimation; Geodesic lower bound; Riemannian structure; ambient space; embedded submanifolds; metric space; orthogonal matrices; parametric statistical models; unbiased estimators; Contracts; Density measurement; Extraterrestrial measurements; Geometry; Level measurement; Probability density function; Quantum cellular automata; Robots; Stacking;
Conference_Titel :
Signal Processing Advances in Wireless Communications, 2004 IEEE 5th Workshop on
Print_ISBN :
0-7803-8337-0
DOI :
10.1109/SPAWC.2004.1439287