Title of article :
Kalman filter and ridge regression backpropagation algorithms
Author/Authors :
Neamah, Irtefaa A. Faculty of Computer Science and Mathematics - University of Kufa, Iraq , Abdul Redhaa, Zainab Ministry of Education, Najaf, Iraq
Pages :
9
From page :
485
To page :
493
Abstract :
The Kalman filter (KF) compare with the ridge regression backpropagation algorithm (RRBp) by conducting a numerical simulation study that relied on generating random data applicable to the KF and the RRBp in different sample sizes to determine the performance and behavior of the two methods. After implementing the simulation, the mean square error (MSE) value was calculated, which is considered a performance measure, to find out which two methods are better in making an estimation for random data. After obtaining the results, we find that the Kalman filter has better performance, the higher the randomness and noise in generating the data, while the other algorithm is suitable for small sample sizes and where the noise ratios are lower.
Keywords :
Kalman filter , ridge regression , backpropagation algorithms , estimation
Journal title :
International Journal of Nonlinear Analysis and Applications
Serial Year :
2021
Record number :
2701620
Link To Document :
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