Respondida
How to run time series neural network on a rolling basis?
What you want doesn't make much sense. 1. You are misusing the NN term validate. Typically, there are two steps design + ...

más de 7 años hace | 0

Respondida
Can I use a NARX neural net to learn a time series of the form: y(k) = K0 * y(k-1) + K1 * x(k) + K2 * x(k-1) + K3 * x(k-2) where x(k) is the input time series ?
Only if k and n are positive and linearly related. Hope this helps. *Thank you for formally accepting my answer* Greg...

más de 7 años hace | 0

| aceptada

Respondida
Ho to add activation function neuron?
Search the NEWSGROUP AND ANSWERS using greg patternnet Hope this helps. *Thank you for formally accepting my answer*...

más de 7 años hace | 0

| aceptada

Respondida
Large values of MSE and RMSE
I always plot the auto and cross correlation functions before determining which range of delays to try during my search of the m...

más de 7 años hace | 0

| aceptada

Respondida
Where in documentation does it say that fitnet([]) gives a linear model?
fitnet(H) yields H nodes in the hidden layer A linear function needs no hidden layer I could only think of 2 possibilities...

más de 7 años hace | 1

| aceptada

Respondida
Using R^2 results to optimize number of neurons in hidden layer
The answer is H = 12. H >= 13 is overfitting. If that makes you queasy, average the output of the H=12 net with the 2 with H ...

más de 7 años hace | 0

| aceptada

Respondida
Inputs and targets have different numbers of samples.
In general: For I-dimensional input vectors and O-dimensional target/output vectors size(input) = [ I N ] size(targ...

más de 7 años hace | 1

Respondida
What's the difference between NARX open loop + remove delay and closed loop to forecast N steps ahead?
Open loop (OL) uses a priori target information to simulate output feedback. It is primarily used for design since the future o...

más de 7 años hace | 0

Respondida
About net.divideParaM.valRatio
1. Now, in a classification problem, I didn't want the validation to be too low and I set net.divideParam.valRatio = ...

más de 7 años hace | 0

Respondida
What is the difference between trainlm and trainrp?
Before asking questions about any functions it is good practice to first use the MATLAB info via, e.g., help trainrp doc ...

más de 7 años hace | 0

| aceptada

Respondida
Apply function to each column of matrix for all columns without for loop
The MATLAB CONVENTION is that functions operate on matrix columns. Therefore, it is only with user-defined functions that ope...

más de 7 años hace | 1

Respondida
How to correctly use the newrb function for multidimensional data?
???...I cannot understand your confusion !!! ESPECIALLY since the documentation explicitly states X - RxQ matrix o...

más de 7 años hace | 0

Respondida
How to correctly use the newrb function for multidimensional data?
Individual inputs, targets and outputs are ALWAYS column vectors. help newrb newrb Design a radial basis network. R...

más de 7 años hace | 0

| aceptada

Respondida
Train nonlinear input-output neural network with multiple data sets
ALL OF YOUR FEARS ARE UNFOUNDED. IN PARTICULAR 1. Combining inputs into one large set to obtain jumps in the data can be bene...

más de 7 años hace | 0

Respondida
neural network NARX time series
It is not unusual for performance to degrade substantially when the loop is closed. Solutions that that have worked for me ...

más de 7 años hace | 0

Respondida
Type of artificial neural netowrk suitable for learn and then predict forest growth
This is aregression prolem, not a classification problem. help fitnet doc fitnet Hope this helps *Thank you for fo...

más de 7 años hace | 1

Respondida
How do I add layer to a custom NN while keeping the weights and biases of trained layer constant?
What I have done is to store the signals that will be inputs to the addition. Then I use that stored data set to train the ad...

más de 7 años hace | 0

Respondida
WHY HASN'T THE PERSISTENT ERROR IN HELP/DOC/TYPE NEWFF BEEN CORRECTED???
The answer is in the question

más de 7 años hace | 0

| aceptada

Respondida
Neural Network Search Strategy Confusion
The answer is in the question

más de 7 años hace | 0

| aceptada

Respondida
MORE HELPFUL THAN CODE IN HELP/DOC/TYPE NEWFF?
The answer is in the question!

más de 7 años hace | 0

| aceptada

Respondida
What is "THE STANDARD UNIVERSAL APPROXIMATOR NEURAL NETWORK "
The question is the answer

más de 7 años hace | 0

| aceptada

Respondida
Questions about the regularization (Modified Performance Function) of neural network
Oh! … O.K. The simplefit_dataset is smooth with 4 interior local extrema. Therefore, you probably only need H = 4 hidden node...

más de 7 años hace | 0

| aceptada

Respondida
Questions about the regularization (Modified Performance Function) of neural network
% When I search the command line window for info on "regularization" : >> help regularization regularization not found. ...

más de 7 años hace | 1

Respondida
Can we say that overfitting occur in this plot?
This is a case of *OVERTRAINING AN OVERFIT NET* There are at least 3 ways to avoid this: 1. *DO NOT OVE...

más de 7 años hace | 1

Respondida
bayesopt: how do I know when the hyperparameter optimization has converged?
For good estimators I tend to be satisfied when the squared error is at least 100 times smaller than that of the reference naive...

más de 7 años hace | 0

Respondida
What are the acceptable values of mean squared percentage error in load forecasting in neural network?
The simplest model for a neural net reference is just assuming that the output is a constant. The minimum MSE occurs when that c...

más de 7 años hace | 1

Respondida
What is the difference between recurrent neural network and NAR and NARX networks? Is there any good literature available to understand the difference between them, especially the training algorithms in MATLAB backend implementation. Thanks
Recurrent networks are a general category of networks that feed output or intermediate signals BACKWARD toward a PREVIOUS point ...

más de 7 años hace | 0

Pregunta


What is "THE STANDARD UNIVERSAL APPROXIMATOR NEURAL NETWORK "
The "STANDARD" UNIVERSAL APPROXIMATOR NEURAL NETWORK is a hidden layer regression net with 1. A SINGLE hidden layer ...

más de 7 años hace | 1 respuesta | 0

1

respuesta

Respondida
How to test rbf for character recognition?
If that character was not part of the training set, add one or more noisy versions of it to the training set and continue traini...

más de 7 años hace | 0

Cargar más