Title :
Probability Density of Weight Deviations Given Preceding Weight Deviations for Proportionate-Type LMS Adaptive Algorithms
Author :
Kevin Wagner;Miloš Doroslovacki
Author_Institution :
Radar Division of the Naval Research Laboratory, Washington, DC, USA
Abstract :
In this work, the conditional probability density function of the current weight deviations given the preceding weight deviations is generated for a wide array of proportionate type least mean square algorithms. The conditional probability density function is derived for colored input signals when noise is present as well as when noise is absent. Additionally, the marginal conditional probability density function for weight deviations is derived. Finally, potential applications of the derived conditional probability distributions are discussed and an example finding the steady-state probability distribution is presented.
Keywords :
"Joints","Covariance matrix","Probability density function","Least squares approximation","Least mean square algorithms","Noise","Noise measurement"
Journal_Title :
IEEE Signal Processing Letters
DOI :
10.1109/LSP.2011.2168816