TreeBagger: Table variable is not a valid predictor.
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I'm trying to use TreeBagger to build a classifier based on the UCI Diabetes 130-US database, http://archive.ics.uci.edu/ml/datasets/Diabetes+130-US+hospitals+for+years+1999-2008.
I have imported the data as a table (letting Matlab decide on the data types), and have done some cleaning on the data. I'm calling the classifier as:
num_trees = 50;
B = TreeBagger(num_trees, train, train.readmitted,...
'OOBPrediction','On',...
'Method','classification');
oobErrorBaggedEnsemble = oobError(B);
plot(oobErrorBaggedEnsemble)
xlabel 'Number of grown trees';
ylabel 'Out-of-bag classification error';
I get the following error:
Error using classreg.learning.internal.table2PredictMatrix>makeXMatrix (line 100) Table variable is not a valid predictor.
Error in classreg.learning.internal.table2PredictMatrix (line 57)
Xout = makeXMatrix(X,CategoricalPredictors,vrange,pnames);
Error in classreg.learning.classif.CompactClassificationTree/predict (line 639)
X = classreg.learning.internal.table2PredictMatrix(X,[],[],...
Error in CompactTreeBagger/treeEval (line 1083)
[labels,~,nodes] = predict(tree,x);
Error in CompactTreeBagger/predictAccum (line 1414)
thisR = treeEval(bagger,it,thisX,doclassregtree);
Error in CompactTreeBagger/error (line 470)
predictAccum(bagger,X,'useifort',useIforT,...
Error in TreeBagger/oobError (line 1479)
err = error(bagger.Compact,bagger.X,bagger.Y,...
train is a table, and table.readmitted is a cell retrieved from the table. Most of the rows are cells, as most of the data in this dataset is categorical.
I'm wondering is there are certain datatypes that the classifier can't handle.
Thanks for any help!
4 Kommentare
SK
am 25 Nov. 2019
I get similar errors below. Karel Mundich, did you get your error resolved since you posed the article? Any help is appreciated. Thanks!
Error in classreg.learning.internal.table2PredictMatrix (line 47)
Xout = makeXMatrix(X,CategoricalPredictors,vrange,pnames);
Error in classreg.learning.regr.RegressionModel/predict (line 169)
X = classreg.learning.internal.table2PredictMatrix(X,[],[],...
Error in classreg.learning.regr.CompactRegressionEnsemble/predict (line 95)
yfit = predict@classreg.learning.regr.RegressionModel(this,X,varargin{:});
Error in mlearnapp.internal.model.coremodel.TrainedRegressionEnsemble>@(x)predict(RegressionEnsemble,x) (line 50)
functionHandle = @(x) predict(RegressionEnsemble, x);
Error in mlearnapp.internal.model.transformation.TrainedManualFeatureSelection>@(x)decoratedPredictFunction(featureSelectionFunction(x)) (line 66)
functionHandle = @(x) decoratedPredictFunction(featureSelectionFunction(x));
Error in mlearnapp.internal.model.DatasetSpecification>@(x)exportableModel.predictFcn(predictorExtractionFcn(x)) (line 166)
newExportableModel.predictFcn = @(x) exportableModel.predictFcn(predictorExtractionFcn(x));
Karel Mundnich
am 25 Nov. 2019
Bearbeitet: Karel Mundnich
am 25 Nov. 2019
Ridwan Alam
am 26 Nov. 2019
Hi Karel, has this question been answered already then?
Karel Mundnich
am 26 Nov. 2019
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