Title :
A Geometrical Interpretation of Exponentially Embedded Families of Gaussian Probability Density Functions for Model Selection
Author :
Costa, Russell ; Kay, Steven
Author_Institution :
Naval Undersea Warfare Center Newport, Newport, RI, USA
Abstract :
Model selection via exponentially embedded families (EEF) of probability models has been shown to perform well on many practical problems of interest. A key component in utilizing this approach is the definition of a model origin (i.e. null hypothesis) which is embedded individually within each competing model. In this correspondence we give a geometrical interpretation of the EEF and study the sensitivity of the EEF approach to the choice of model origin in a Gaussian hypothesis testing framework. We introduce the information center (I-center) of competing models as an origin in this procedure and compare this to using the standard null hypothesis. Finally we derive optimality conditions for which the EEF using I-center achieves optimal performance in the Gaussian hypothesis testing framework.
Keywords :
Gaussian distribution; information centres; signal detection; EEF approach; Gaussian hypothesis testing framework; Gaussian probability density functions; exponentially embedded families; geometrical interpretation; information center; model selection; probability models; sensitivity; signal detection; Equations; Mathematical model; Maximum likelihood estimation; Noise; Sensitivity; Testing; Vectors; Exponentially embedded families; hypothesis testing; modeling; signal detection;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2012.2222393