Crossval and regressiontree.fit - how does crossval works?

조회 수: 4 (최근 30일)
Tania
Tania 2014년 6월 30일
댓글: Tania 2014년 7월 9일
Hey!:) I am using Regressiontree.fit in order to do build a decision tree for my data. If I want it to do cross validation automatic I have to include (‘crossval’,’on’), right? I have done it, but I am not quite sure what matlab has done exactly? What does KFold 10 means? How does this automatic crossvalidation works?
Thanks a lot for your help!
Please find my code below: >> rtree=RegressionTree.fit(X,price,'crossval', 'on' )
rtree =
classreg.learning.partition.RegressionPartitionedModel
CrossValidatedModel: 'Tree'
PredictorNames: {'x1' 'x2' 'x3'}
CategoricalPredictors: []
ResponseName: 'Y'
NObservations: 5255
KFold: 10
Partition: [1x1 cvpartition]
ResponseTransform: 'none'

채택된 답변

Shashank Prasanna
Shashank Prasanna 2014년 6월 30일
편집: Shashank Prasanna 2014년 6월 30일
What does KFold 10 means?
matlab has done exactly?
MATLAB has performed kfold cross-validation and returned a partitioned model instead of a single regression tree. Crossvalidation allows you to assess the predictive performance of model on cross-validated data. You can access these methods using the output of a cross validated model: kfoldfun, kfoldLoss, kfoldPredict.
Alternatively you can fit a model and then call cross val this way:
rtree = RegressionTree.fit(X,price);
rcrossvaltree = crossval(rtree);
Read more here (also includes examples):
  댓글 수: 5
Shashank Prasanna
Shashank Prasanna 2014년 7월 2일
Both you questions are answered in the documentation page:
Tania
Tania 2014년 7월 9일
thank you!

댓글을 달려면 로그인하십시오.

추가 답변 (0개)

Community Treasure Hunt

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

Start Hunting!

Translated by