Path: Top -> Journal -> Telkomnika -> 2016 -> Vol 14, No 3A
Improvement of RBF Neural Network by AdaBoost Algorithm Combined with PSO
Improvement of RBF Neural Network by AdaBoost Algorithm Combined with PSO
Undergraduate Theses from gdlhub / 2016-11-11 02:50:23Oleh : Yuanyuan Wang, Xiang Li, Telkomnika
Dibuat : 2016-09-01, dengan 1 file
Keyword : RBF; AdaBoost; PSO algorithm;strong predictor
Url : http://journal.uad.ac.id/index.php/TELKOMNIKA/article/view/4395
The traditional RBF neural network has the problem of slow training speed and low efficiency, this paper puts forward the algorithm of improvement of RBF neural network by AdaBoost algorithm combined with PSO, to expand the application range of the RBF neural network. Firstly, it preprocesses the sample data in training set, and initialize the weights of test data; Secondly, it optimizes and chooses different implied layer functions and network learning parameters by using the improved PSO algorithm, to produce different types of RBF weak predictor, and repeatedly train the sample data by using Matlab tools; Finally, it constructs multiple generated RBF weak predictors to strong predictors by using AdaBoost iterative algorithm. It chooses data sets of UCI database to do the simulation experiment, and the simulation results show that the proposed algorithm further reduces the mean absolute error, compared with the traditional RBF neural network prediction, the experiment has improved the prediction precision of the network, to provide a reference for RBF neural network prediction.
Deskripsi Alternatif :The traditional RBF neural network has the problem of slow training speed and low efficiency, this paper puts forward the algorithm of improvement of RBF neural network by AdaBoost algorithm combined with PSO, to expand the application range of the RBF neural network. Firstly, it preprocesses the sample data in training set, and initialize the weights of test data; Secondly, it optimizes and chooses different implied layer functions and network learning parameters by using the improved PSO algorithm, to produce different types of RBF weak predictor, and repeatedly train the sample data by using Matlab tools; Finally, it constructs multiple generated RBF weak predictors to strong predictors by using AdaBoost iterative algorithm. It chooses data sets of UCI database to do the simulation experiment, and the simulation results show that the proposed algorithm further reduces the mean absolute error, compared with the traditional RBF neural network prediction, the experiment has improved the prediction precision of the network, to provide a reference for RBF neural network prediction.
Beri Komentar ?#(0) | Bookmark
Properti | Nilai Properti |
---|---|
ID Publisher | gdlhub |
Organisasi | Telkomnika |
Nama Kontak | Herti Yani, S.Kom |
Alamat | Jln. Jenderal Sudirman |
Kota | Jambi |
Daerah | Jambi |
Negara | Indonesia |
Telepon | 0741-35095 |
Fax | 0741-35093 |
E-mail Administrator | elibrarystikom@gmail.com |
E-mail CKO | elibrarystikom@gmail.com |
Print ...
Kontributor...
- , Editor: sukadi
Download...
Download hanya untuk member.
4395-9137-1-PB
File : 4395-9137-1-PB.pdf
(219679 bytes)