whether forward and predict in deep learning are the same

12 views (last 30 days)
So far I think they are the same but may I confirm?

Accepted Answer

Souvik Das
Souvik Das on 18 Aug 2022
'forward' is used to compute deep learning network output for TRAINING whereas 'predict' is used to compute deep learning network output for INFERENCE.
In some cases like yours, both may give similar results, however some deep learning layers behave differently during training and inference (prediction). For example, during training, dropout layers randomly set input elements to zero to help prevent overfitting, but during inference, dropout layers do not change the input.
Please refer the below links for more details-

More Answers (1)

Souvik Das
Souvik Das on 18 Aug 2022
I am assuming with 'forward', you mean 'forward propagation'. Deep learning networks usually have a lot of layers. Each layer accepts input data, processes it as per the activation function and passes it to the next layer. This is called 'forward propagation'.
In an abstract way, you can say 'prediction' is something that happens with the last layer where we get the final results from our deep learning network.
So 'prediction' and 'forward propagation' have a minor difference between them.
  1 Comment
robinho robinho
robinho robinho on 18 Aug 2022
thank you for your reply. If the network has several layers with x being the input data (dlarray format), then forward(network,x) and predict(network,x) yield the same result as far as I see.

Sign in to comment.

Categories

Find more on Image Data Workflows in Help Center and File Exchange

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!