Borrar filtros
Borrar filtros

Expression or statement is incorrect--possibly unbalanced (, {, or [.

1 visualización (últimos 30 días)
ghali ahmed
ghali ahmed el 10 de Nov. de 2017
Comentada: Walter Roberson el 11 de Nov. de 2017
hello every body i have an error ??? Error: File: test.m Line: 31 Column: 3 exactely in [~,scores] = predict(cl,xGrid); i have Matlab 7.8.0 (R2009a)
  1. rand(1); % For reproducibility
  2. r = sqrt(rand(100,1)); % Radius
  3. t = 2*pi*rand(100,1); % Angle
  4. data1 = [r.*cos(t), r.*sin(t)]; % Points
  5. r2 = sqrt(3*rand(100,1)+1); % Radius
  6. t2 = 2*pi*rand(100,1); % Angle
  7. data2 = [r2.*cos(t2), r2.*sin(t2)]; % points
  8. figure;
  9. plot(data1(:,1),data1(:,2),'r.','MarkerSize',15)
  10. hold on
  11. plot(data2(:,1),data2(:,2),'b.','MarkerSize',15)
  12. ezpolar(@(x)1);ezpolar(@(x)2);
  13. axis equal
  14. hold off
  15. data3 = [data1;data2];
  16. theclass = ones(200,1);
  17. theclass(1:100) = -1;
  18. %Train the SVM Classifier
  19. cl = fitcsvm(data3,theclass,'KernelFunction','rbf',...
  20. 'BoxConstraint',Inf,'ClassNames',[-1,1]);
  21. % Predict scores over the grid
  22. d = 0.02;
  23. [x1Grid,x2Grid] = meshgrid(min(data3(:,1)):d:max(data3(:,1)),...
  24. min(data3(:,2)):d:max(data3(:,2)));
  25. xGrid = [x1Grid(:),x2Grid(:)];
  26. [~,scores] = predict(cl,xGrid);
  27. % Plot the data and the decision boundary
  28. figure;
  29. h(1:2) = gscatter(data3(:,1),data3(:,2),theclass,'rb','.');
  30. hold on
  31. ezpolar(@(x)1);
  32. h(3) = plot(data3(cl.IsSupportVector,1),data3(cl.IsSupportVector,2),'ko');
  33. contour(x1Grid,x2Grid,reshape(scores(:,2),size(x1Grid)),[0 0],'k');
  34. legend(h,{'-1','+1','Support Vectors'});
  35. axis equal
  36. hold off

Respuestas (1)

Steven Lord
Steven Lord el 10 de Nov. de 2017
The ability to ignore specific input or output arguments in function calls using the tilde operator was introduced in release R2009b. Replace ~ with a dummy variable name, like dummy, for older releases.
  3 comentarios
per isakson
per isakson el 11 de Nov. de 2017
fitcsvm - Train binary support vector machine classifier
fitcsvm trains or cross-validates a support vector machine (SVM)
model for two-class (binary) classification on a low- through
moderate-dimensional predictor data set. fitcsvm supports...
Documentation > Statistics and Machine Learning Toolbox > Classification > Support Vector Machine Classification
Walter Roberson
Walter Roberson el 11 de Nov. de 2017
That routine was introduced in R2014a.
In your software release there was no built-in SVM in any toolbox, so people would compile and link the third party libsvm

Iniciar sesión para comentar.

Etiquetas

Productos

Community Treasure Hunt

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

Start Hunting!

Translated by