필터 지우기
필터 지우기

Is it possible to use cross-validation in the training procedure of nonlinear regression to prevent overfitting?

조회 수: 4 (최근 30일)
Hi Everyone,
I would like to ask if cross-validation can be used training procedure in a nonlinear regression model. I have read many questions and answers about it but I haven't found a solution yet. I have a data set that includes 8 predictors and 1 response variable. I divided it for training (%70 of all data) and testing (%30 of all data). I used nlinfit and nlpredicci as shown below. "modelfun" is a polynomial function. "ypred" is the forecasted value.
[beta,R,J,CovB,MSE] = nlinfit(Xtrain,Ytrain,@modelfun,b0,opts)
Xnew = Xtest; % new x values to be tested in the trained model are assigned to Xnew.
[ypred,~] = nlpredci(@modelfun,Xnew,beta,R,'Jacobian',J,'Covar',CovB,'MSE',MSE)
Now, this model gives the coefficients matrix(beta) using only one training set. I know that usage of crossval function which is testing your model using different sets of data (using k fold) and gives a mean error rate. Is that the only thing we can do using crossval ? While the training process is being carried out using k fold data sets, can I obtain the optimum coefficient matrix to be used for the prediction process as a result of these? I want to train my model with different data sets and determine the best coefficient matrix to be used in forecasting to prevent overfitting using cross-validation procedures but I am stuck at this point. Any suggestions?

답변 (0개)

카테고리

Help CenterFile Exchange에서 Gaussian Process Regression에 대해 자세히 알아보기

Community Treasure Hunt

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

Start Hunting!

Translated by