how can i plot Confusion matrix by using the predicted and actual data ?

조회 수: 2 (최근 30일)
Hi all,
I would obtain the confusion matrix table and use the code in graphs section the classification based on KNN classifier but it gave me error and i do not know what is the issue.
Hopfully,I can have help and i will attach the workspace here Google drive and the code that has been used.below.
Traindata = readtable('phase b.csv');
Testdata = readtable('testing_b.csv');
Actualdata = readtable('testing_b.csv');
%% -------------- Feature Scalling -------------------------------
% -------------- Method 1: Standardization ----------------------
% ---------------------------- Code -----------------------------
%training
stand_I = (Traindata.I - mean(Traindata.I))/std(Traindata.I);
Traindata.I = stand_I;
stand_H3 = (Traindata.H3 - mean(Traindata.H3))/std(Traindata.H3);
Traindata.H3 = stand_H3;
stand_H5 = (Traindata.H5 - mean(Traindata.H5))/std(Traindata.H5);
Traindata.H5 = stand_H5;
stand_H7 = (Traindata.H7 - mean(Traindata.H7))/std(Traindata.H7);
Traindata.H7 = stand_H7;
stand_H9 = (Traindata.H9 - mean(Traindata.H9))/std(Traindata.H9);
Traindata.H9 = stand_H9;
%testing
stand_I = (Testdata.I - mean(Testdata.I))/std(Testdata.I);
Testdata.I = stand_I;
stand_H3 = (Testdata.H3 - mean(Testdata.H3))/std(Testdata.H3);
Testdata.H3 = stand_H3;
stand_H5 = (Testdata.H5 - mean(Testdata.H5))/std(Testdata.H5);
Testdata.H5 = stand_H5;
stand_H7 = (Testdata.H7 - mean(Testdata.H7))/std(Testdata.H7);
Testdata.H7 = stand_H7;
stand_H9 = (Testdata.H9 - mean(Testdata.H9))/std(Testdata.H9);
Testdata.H9 = stand_H9;
%testing
stand_I = (Actualdata.I - mean(Actualdata.I))/std(Actualdata.I);
Actualdata.I = stand_I;
stand_H3 = (Actualdata.H3 - mean(Actualdata.H3))/std(Actualdata.H3);
Actualdata.H3 = stand_H3;
stand_H5 = (Actualdata.H5 - mean(Actualdata.H5))/std(Actualdata.H5);
Actualdata.H5 = stand_H5;
stand_H7 = (Actualdata.H7 - mean(Actualdata.H7))/std(Actualdata.H7);
Actualdata.H7 = stand_H7;
stand_H9 = (Actualdata.H9 - mean(Actualdata.H9))/std(Actualdata.H9);
Actualdata.H9 = stand_H9;
X = [Traindata.I Traindata.THD Traindata.H3 Traindata.H5 Traindata.H7 Traindata.H9];
Y = ordinal(Traindata.Loads);
isCategoricalPredictor = [false, false, false, false, false, false];
%% BUILD THE CLASSIFIER KNN
classificationKNN = fitcknn(...
X, ...
Y, ...
'Distance', 'Euclidean', ...
'Exponent', [], ...
'NumNeighbors', 50, ...
'DistanceWeight', 'Equal', ...
'Standardize', true, ...
'ClassNames', [1; 2; 3; 4]);
classificationKNN = compact(classificationKNN);
[predClass,classifScore] = predict(classificationKNN,[Testdata.I Testdata.THD Testdata.H3 Testdata.H5 Testdata.H7 Testdata.H9]);
classnames = classificationKNN.ClassNames;
Preddata = [table(Testdata.Loads,predClass),array2table(classifScore)];
Preddata.Properties.VariableNames = [{'Actual'},{'Predicted'},classnames'];
%% Graphs
figure
C = confusionchart(Actualdata.Loads,[Preddata.Predicted{:}]-'0');
sortClasses(C,{'1' '2' '3' '4'})
C.Normalization = 'row-normalized';

채택된 답변

Hiro Yoshino
Hiro Yoshino 2022년 9월 12일
Preddata = [table(Testdata.Loads,predClass),array2table(classifScore)];
It seems the statement above is not right. For confusionchart, you should use "Labels". classifScore is not the one that confusionchart takes (see: confusionchart ).
C = confusionchart(Actualdata.Loads,[Preddata.Predicted{:}]-'0')
This seems to be comparing the "label" with the corresponding "score (value)". I believe this is where the issue arises.

추가 답변 (0개)

카테고리

Help CenterFile Exchange에서 Discriminant Analysis에 대해 자세히 알아보기

Community Treasure Hunt

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

Start Hunting!

Translated by