show the progress of fitecoc classifier

1 view (last 30 days)
Ali Yar Khan
Ali Yar Khan on 18 Dec 2019
Answered: Elnaz Yousefi on 4 Jan 2023
I have following code autogenerated from Classification Learner app. I want to show the progress of the evaluation when I run the script. Code is as follows:
table = array2table(dataset.data);
variableNames = table.Properties.VariableNames;
table.class = dataset.labels; %predictorNames = {'data1', 'data2', 'data3', 'data4', 'data5', 'data6', 'data7', 'data8', 'data9', 'data10', 'data11', 'data12', 'data13', 'data14', 'data15', 'data16', 'data17', 'data18', 'data19', 'data20', 'data21', 'data22', 'data23', 'data24', 'data25', 'data26', 'data27', 'data28', 'data29', 'data30', 'data31', 'data32', 'data33', 'data34', 'data35', 'data36', 'data37', 'data38', 'data39', 'data40', 'data41', 'data42', 'data43', 'data44', 'data45', 'data46', 'data47', 'data48', 'data49', 'data50', 'data51', 'data52', 'data53', 'data54', 'data55', 'data56', 'data57', 'data58', 'data59', 'data60', 'data61', 'data62', 'data63', 'data64', 'data65', 'data66', 'data67', 'data68', 'data69', 'data70', 'data71', 'data72', 'data73', 'data74', 'data75', 'data76', 'data77', 'data78', 'data79', 'data80', 'data81', 'data82', 'data83', 'data84', 'data85', 'data86', 'data87', 'data88', 'data89', 'data90', 'data91', 'data92', 'data93', 'data94', 'data95', 'data96', 'data97', 'data98', 'data99', 'data100', 'data101', 'data102', 'data103', 'data104', 'data105', 'data106', 'data107', 'data108', 'data109', 'data110', 'data111', 'data112', 'data113', 'data114', 'data115', 'data116', 'data117', 'data118', 'data119', 'data120', 'data121', 'data122', 'data123', 'data124', 'data125', 'data126', 'data127', 'data128', 'data129', 'data130', 'data131', 'data132', 'data133', 'data134', 'data135', 'data136', 'data137', 'data138', 'data139', 'data140', 'data141', 'data142', 'data143', 'data144'};
predictors = table(:, variableNames);
response = table.class;
isCategoricalPredictor = [false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false, false];
% Train a classifier % This code specifies all the classifier options and trains the classifier.
template = templateSVM(...
'KernelFunction', 'polynomial', ...
'PolynomialOrder', 2, ...
'KernelScale', 'auto', ...
'BoxConstraint', 1, ...
'Standardize', true);
classificationSVM = fitcecoc(...
predictors, ...
response, ...
'Learners', template, ...
'Coding', 'onevsone', ...
'ClassNames', [1; 2; 3; 4; 5; 6; 7; 8; 9; 10; 11; 12; 13; 14; 15; 16; 17; 18; 19; 20; 21; 22; 23; 24; 25; 26; 27; 28; 29; 30; 31; 32; 33; 34; 35; 36; 37]);
% Create the result struct with predict function
predictorExtractionFcn = @(t) t(:, predictorNames);
svmPredictFcn = @(x) predict(classificationSVM, x);
trainedClassifier.predictFcn = @(x) svmPredictFcn(predictorExtractionFcn(x));
% Add additional fields to the result struct
trainedClassifier.RequiredVariables = {'data1', 'data2', 'data3', 'data4', 'data5', 'data6', 'data7', 'data8', 'data9', 'data10', 'data11', 'data12', 'data13', 'data14', 'data15', 'data16', 'data17', 'data18', 'data19', 'data20', 'data21', 'data22', 'data23', 'data24', 'data25', 'data26', 'data27', 'data28', 'data29', 'data30', 'data31', 'data32', 'data33', 'data34', 'data35', 'data36', 'data37', 'data38', 'data39', 'data40', 'data41', 'data42', 'data43', 'data44', 'data45', 'data46', 'data47', 'data48', 'data49', 'data50', 'data51', 'data52', 'data53', 'data54', 'data55', 'data56', 'data57', 'data58', 'data59', 'data60', 'data61', 'data62', 'data63', 'data64', 'data65', 'data66', 'data67', 'data68', 'data69', 'data70', 'data71', 'data72', 'data73', 'data74', 'data75', 'data76', 'data77', 'data78', 'data79', 'data80', 'data81', 'data82', 'data83', 'data84', 'data85', 'data86', 'data87', 'data88', 'data89', 'data90', 'data91', 'data92', 'data93', 'data94', 'data95', 'data96', 'data97', 'data98', 'data99', 'data100', 'data101', 'data102', 'data103', 'data104', 'data105', 'data106', 'data107', 'data108', 'data109', 'data110', 'data111', 'data112', 'data113', 'data114', 'data115', 'data116', 'data117', 'data118', 'data119', 'data120', 'data121', 'data122', 'data123', 'data124', 'data125', 'data126', 'data127', 'data128', 'data129', 'data130', 'data131', 'data132', 'data133', 'data134', 'data135', 'data136', 'data137', 'data138', 'data139', 'data140', 'data141', 'data142', 'data143', 'data144'};
trainedClassifier.ClassificationSVM = classificationSVM;
trainedClassifier.About = 'This struct is a trained model exported from Classification Learner R2018a.'; trainedClassifier.HowToPredict = sprintf('To make predictions on a new table, T, use: \n yfit = c.predictFcn(T) \nreplacing ''c'' with the name of the variable that is this struct, e.g. ''trainedModel''. \n \nThe table, T, must contain the variables returned by: \n c.RequiredVariables \nVariable formats (e.g. matrix/vector, datatype) must match the original training data. \nAdditional variables are ignored. \n \nFor more information, see <a href="matlab:helpview(fullfile(docroot, ''stats'', ''stats.map''), ''appclassification_exportmodeltoworkspace'')">How to predict using an exported model</a>.');
% Perform cross-validation
partitionedModel = crossval(trainedClassifier.ClassificationSVM, 'KFold', 10);
% Compute validation predictions
[validationPredictions, validationScores] = kfoldPredict(partitionedModel);
% Compute validation accuracy
validationAccuracy = 1 - kfoldLoss(partitionedModel, 'LossFun', 'ClassifError');
How can I show the intermediate progress of this script?

Answers (1)

Elnaz Yousefi
Elnaz Yousefi on 4 Jan 2023
Hi, I'm struggling with the same code. about this code, what is the difference between trained Classifier.Required Variables and 'ClassNames ? I don't know which of my data should be used for these two.

Products


Release

R2018a

Community Treasure Hunt

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

Start Hunting!