I keep getting a warning and poor classification using fitcecoc.

8 次查看(过去 30 天)
Hi, I'm wondering if anyone may be able to help with a problem I'm having in classifiying some data?
I'm trying to classify a predictor which is a 4 x 154 double array against a response which is a 80 x 1 double array.
I'm very new to using the machine learning tools and have been trying to follow examples, but get the warning (see below), I'm struggling to see the problem. I wondered if anyone may be able to help or if this is even the best way of classifying data in this format?
Kind regards,
Andy
I'm using the following code:
%Create a classifier that takes as input the condition indicators and returns the combined fault flag.
%Train a support vector machine that uses a 2nd order polynomial kernel.
%Use the cvpartition command to partition the ensemble members into a set for training and a set for validation.
rng('default') % for reproducibility
predictors = scTrain(:,:);
response = data.CombinedFlag;
cvp = cvpartition(size(predictors,1),'KFold',5);
% Create and train the classifier
template = templateSVM(...
'KernelFunction', 'polynomial', ...
'PolynomialOrder', 2, ...
'KernelScale', 'auto', ...
'BoxConstraint', 1, ...
'Standardize', true);
combinedClassifier = fitcecoc(...
predictors(cvp.training(1),:), ...
response(cvp.training(1),:), ...
'Learners', template, ...
'Coding', 'onevsone', ...
'ClassNames', [0; 1; 2; 3; 4; 5; 6; 7]);
% Check performance by computing and plotting the confusion matrix
actualValue = response(cvp.test(1),:);
predictedValue = predict(combinedClassifier, predictors(cvp.test(1),:));
confdata = confusionmat(actualValue,predictedValue);
figure,
labels = {'None','Capacitor','Thermal','Bondwire','Bondwire & Capacitor', ...
'Thermal & Bondwire','Thermal & Capacitor','All'};
h = heatmap(confdata,...
'YLabel', 'Actual IGBT fault', ...
'YDisplayLabels', labels, ...
'XLabel', 'Predicted IGBT fault', ...
'XDisplayLabels', labels, ...
'ColorbarVisible','off');
However, I keep getting the following warning for each learner which in turn leads to no classes being classified.
Warning: The number of folds K is greater than the number of observations N. K will be set to the
value of N.
> In internal.stats.cvpartitionInMemoryImpl (line 158)
In cvpartition (line 175)
In Boost_DT (line 206)
Warning: Unable to fit learner 1 (SVM) because: No class names are found in input labels.
> In ClassificationECOC>localFitECOC/loopBody (line 647)
In internal.stats.parallel.smartForSliceout (line 174)
In ClassificationECOC>localFitECOC (line 571)
In ClassificationECOC (line 171)
In classreg.learning/FitTemplate/fit (line 263)
In ClassificationECOC.fit (line 116)
In fitcecoc (line 356)
In Boost_DT (line 215)

采纳的回答

Prince Kumar
Prince Kumar 2022-3-31
Hi,
Please have a look at your data first, it seems you data is not in correct format.
You are having 4 x 154 double array, it means you have 4 data point of 154 dimension each. But you are trying to do 5-fold validation.
Please go through k-fold documentation for more information.
Hope this helps!

更多回答(0 个)

类别

Help CenterFile Exchange 中查找有关 Classification Ensembles 的更多信息

Community Treasure Hunt

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

Start Hunting!

Translated by