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LDA with 2D vectors as predictors

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Efstathios Pavlidis
Efstathios Pavlidis el 19 de Mayo de 2022
Respondida: Moksh el 22 de Sept. de 2023
Hi folks,
I have a (4X21) table. The 20 first columns are the predictors which contain 2d vectors eg [-1.014;-0.0194] the last column contains the class.. I use fitdiscr() but I get the error "Table variable trial1 is not a valid predictor". I suspect this happens because the predictors are vectors? Any solutions?? Thank you in advance
train_table=cell2table(tr_all,'VariableNames',{'trial1','trial2','trial3','trial4','trial5','trial6','trial7','trial8','trial9','trial10','trial11', 'trial12', 'trial13', 'trial14', 'trial15', 'trial16', 'trial17','trial18','trial19', 'trial20'});
train_table.trustee=[1;2;3;4];
Mdl_lda=fitcdiscr(train_table,'trustee');
Error using classreg.learning.internal.table2FitMatrix>makeXMatrix
Table variable trial1 is not a valid predictor.
Error in classreg.learning.internal.table2FitMatrix (line 123)
makeXMatrix(X,PredictorNames,CategoricalPredictors,OrdinalIsCategorical,ReferenceLevels);
Error in classreg.learning.classif.FullClassificationModel.prepareData (line 815)
[X,Y,vrange,wastable,varargin] = classreg.learning.internal.table2FitMatrix(X,Y,varargin{:});
Error in classreg.learning.FitTemplate/fit (line 246)
this.PrepareData(X,Y,this.BaseFitObjectArgs{:});
Error in ClassificationDiscriminant.fit (line 107)
this = fit(temp,X,Y);
Error in fitcdiscr (line 168)
this = ClassificationDiscriminant.fit(X,Y,RemainingArgs{:});
Error in Ws_classification_ind (line 143)
Mdl_lda=fitcdiscr(train_table,'trustee');

Respuestas (1)

Moksh
Moksh el 22 de Sept. de 2023
Hi Efstathios,
I understand that you are using the “fitcdiscr” function on a table in MATLAB and are facing the mentioned error.
You can try separating the predictor and class columns and convert them into arrays before passing them into the function.
I have created a table as per the mentioned specifications and showed how to do this in the following code:
% Recreating the table with the provided specifications
trial = rand(4, 20);
classes = cell(4, 1);
% Assigning class labels (Random)
classes{1} = 'c1';
classes{2} = 'c2';
classes{3} = 'c1';
classes{4} = 'c1';
% Table with the given specifications
table = array2table(trial);
table.class = classes;
% Converting the predictor variables to seperate array
columnsToConvert = 1:20;
predictorColumns = table(:, columnsToConvert);
predictors = table2array(predictorColumns);
% Class array
classesColumn = table2array(table(:, 21));
% Using the fitcdiscr function
fit = fitcdiscr(predictors, classesColumn);
Here, I am assuming that all the required data is already there, so I have just showed how to perform indexing on some randomly generated data.
For more information about the above used functions, please refer to the following documentation:
Hope this information helps!
Best Regards,
Moksh Aggarwal

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