Extreme Learning Machine ELM is the new dominate training tool for trainig a single hidden layer feed-forward neural network.
the basic learning rules of ELM is presented In these codes.
Important characteristics of this version:
- It extended for usage for both classification and regression.
- It contains functions that normalize the input samples between any desired values.
For classification:
- It allows encoding of the labels of classes into binary codes to satisfy the constraints of Activation functions boundaries.
- After training and in case of prediction the algorithm has the capability to decode again those codes into original labels.
For regression:
- The algorithm also can renormalize the output values after training into original interval.
For any information concerning this code contact me via : berghouttarek@gmail.com
[1] G. Huang, S. Member, H. Zhou, X. Ding, and R. Zhang, “Extreme Learning Machine for Regression and Multiclass Classification,” vol. 42, no. 2, pp. 513–529, 2012.
引用格式
BERGHOUT Tarek (2024). Extreme Learning Machine for classification and regression (https://www.mathworks.com/matlabcentral/fileexchange/69812-extreme-learning-machine-for-classification-and-regression), MATLAB Central File Exchange. 检索时间: .
MATLAB 版本兼容性
平台兼容性
Windows macOS Linux类别
标签
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!ELM_updated/codes
ELM_updated
版本 | 已发布 | 发行说明 | |
---|---|---|---|
2.1.0 | desription |
||
2.0.0 | - encode and decode labels.
|
||
1.9.0 | new description |
||
1.8.0 | referances added |
|
|
1.7.0 | some illustration figures have been added. |
|
|
1.6.0 | important referances are added |
|
|
1.5.0 | estimated outputs of training and testing for both regression or classification are added.
|
|
|
1.4.0 | classification rate code is correct
|
|
|
1.3.0 | the code is managed to be very simple and clear to ELM users |
|
|
1.2.0 | classification rate and RMSE |
|
|
1.1.0 | cllassification rate and RMSE value formula for both regression and cllassification were Corrected |
|
|
1.0.0 |