Course Features
												
												Course Highlights
												
										
												Course Description
												
This course provides a broad theoretical basis for system
identification, estimation, and learning. Students will study least
squares estimation and its convergence properties, Kalman filters,
noise dynamics and system representation, function approximation
theory, neural nets, radial basis functions, wavelets, Volterra
expansions, informative data sets, persistent excitation, asymptotic
variance, central limit theorems, model structure selection, system
order estimate, maximum likelihood, unbiased estimates, Cramer-Rao
lower bound, Kullback-Leibler information distance, Akaike's
information criterion, experiment design, and model validation.
												Technical Requirements
												
	Special software is required to use some of the files in this course: .zip. The .txt files in the assignments section are used for MATLAB®.