Title
A Fast Lane Approach to LMS prediction of respiratory motion signals.
Abstract
As a tool for predicting stationary signals, the Least Mean Squares (LMS) algorithm is widely used. Its improvement, the family of normalised LMS algorithms, is known to outperform this algorithm. However, they still remain sensitive to selecting wrong parameters, being the learning coefficient μ and the signal history length M. We propose an improved version of both algorithms using a Fast Lane Approach, based on parallel evaluation of several competing predictors. These were applied to respiratory motion data from motion-compensated radiosurgery. Prediction was performed using arbitrarily selected values for the learning coefficient μ∈]0,0.3] and the signal history length M∈[1,15]. The results were compared to prediction using the globally optimal values of μ and M found using a grid search. When the learning algorithm is seeded using locally optimal values (found using a grid search on the first 96s of data), more than 44% of the test cases outperform the globally optimal result. In about 38% of the cases, the result comes to within 5% and, in about 9% of the cases, to within 5–10% of the global optimum. This indicates that the Fast Lane Approach is a robust method for selecting the parameters μ and M.
Year
DOI
Venue
2008
10.1016/j.bspc.2008.06.001
Biomedical Signal Processing and Control
Keywords
Field
DocType
Respiratory motion prediction,LMS,Parameter selection,Radiosurgery
Least mean squares filter,Hyperparameter optimization,Mathematical optimization,Pattern recognition,Respiratory motion,Algorithm,Global optimum,Artificial intelligence,Test case,Mathematics
Journal
Volume
Issue
ISSN
3
4
1746-8094
Citations 
PageRank 
References 
7
1.15
2
Authors
4
Name
Order
Citations
PageRank
Floris Ernst16919.42
Alexander Schlaefer210737.72
Sonja Dieterich3214.25
Achim Schweikard417342.11