LSTM Two Input one outpot in Matlab Example

13 visualizaciones (últimos 30 días)
Yossi
Yossi el 13 de Feb. de 2019
Editada: Tasarruf Bashir el 10 de Mayo de 2021
In Matlab's LSTM Example of sequence-to-sequence regression, there was one input vector (number of cases) and one output (prediction of the number of cases) in the regression.
How in this example I can added two additional vectors and one output (prediction of the number of cases) so the two additiona features will reduce the RMSE?
Thank you

Respuestas (1)

Marcelo Olmedo
Marcelo Olmedo el 6 de Mayo de 2020
Hello! The key is in the data entry. I leave you an example importing training data of 5 input variables and one output. Then the test is done and finally it is graphed. The example is very basic but it will give you a good idea of ​​the procedure
  2 comentarios
Mohamed Nedal
Mohamed Nedal el 3 de Jul. de 2020
Hi @Marcelo,
I tried to add a few lines of code to predict new future values of the target output, here's what I added:
%% Forecast the Future
net = resetState(net);
Yforecast = [];
numTimeStepsTest = numel(XTest) + 500; % to forecast new 500 steps in the future
for i = 1:numTimeStepsTest
[net, Yforecast(:,i)] = predictAndUpdateState(net, XTest(:,i), 'ExecutionEnvironment','cpu');
end
but I got this error:
Conversion to double from cell is not possible.
Error in LSTM_multi_motores (line 82)
[net, Yforecast(:,i)] = predictAndUpdateState(net, XTest(:,i),
'ExecutionEnvironment','cpu');
Can you please tell me how to fix this part?
Tasarruf Bashir
Tasarruf Bashir el 10 de Mayo de 2021
Editada: Tasarruf Bashir el 10 de Mayo de 2021
hi@Marcelo Olmedo, i have tried your program with my dataset, having 6 inputs and one output, the rmse value without normalization is very high. but after the normalization the rmse value was dcreased from 1400 to 824. now i am trying to use the technique used in chickenpox example, but couldn't be able to figure out how to use it with multiple variables? can guide me in this regard? thanks in advance

Iniciar sesión para comentar.

Community Treasure Hunt

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

Start Hunting!

Translated by