Differrence between feed forward & feed forward back propagation
Ältere Kommentare anzeigen
I used neural netowrk MLP type to pridect solar irradiance, in my code i used fitnet() commands (feed forward)to creat a neural network.But some people use a newff() commands (feed forward back propagation) to creat their neural network. please what's difference between two types?? :
net=fitnet(Nubmer of nodes in haidden layer); --> it's a feed forward ?? true??
net=newff(Nubmer of nodes in haidden layer); ---> it's a feed forward back propagation ??
Help me please wchich one can i choose for my case (prediction problem)???!!! Who appripriate??
Best regards
2 Kommentare
Greg Heath
am 14 Feb. 2019
A USEFUL POST
GREG
YERRUPALLI GANESH
am 19 Dez. 2020
Difference between levenberg matquardt and feed forward backpropagation algorithm
Akzeptierte Antwort
Weitere Antworten (2)
khan
am 18 Feb. 2015
0 Stimmen
what you said it suggest that the new function have both forward and backward propagation in the same function. Where is the old have only forward pass. You should right click and select help on each of them and you will see.
2 Kommentare
omar belhaj
am 18 Feb. 2015
Greg Heath
am 5 Apr. 2015
@Khan
No. the new functions are just revised versions of the old ones. If you use the commands DOC, HELP, and/or TYPE, you will see that NEWFIT, NEWPR and NEWFF are OBSOLETE and as such, will no longer be maintained by MATLAB.
@omar:
For forecasting/predicting the future, use TIMEDELAYNET(only inputs), NARNET(only output feedback) or NARXNET(both inputs and output feedback). Again, use DOC, HELP, and/or TYPE for details.
Greg
Shireen Shah
am 29 Mai 2018
0 Stimmen
can you please tell me which command(newff or feedforwardnet) is good choice to be used for channel estimation in OFDM using neural networks?
1 Kommentar
Greg Heath
am 21 Okt. 2018
Use
FITNET for regression
and
PATTERNNET for classification
Both are special cases of FEEDFORWARDNET.
Corresponding NEWFIT, NEWPR and NEWFF are obsolete and have been replaced by the above.
Kategorien
Mehr zu Deep Learning Toolbox finden Sie in Hilfe-Center und File Exchange
Produkte
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!