Plot multi-class decision boundaries SVM?
2 views (last 30 days)
Show older comments
Does anyone know how to plot Plot multi-class decision boundaries for SVM?
I'm doing Handwritten Digit classification so have 10-classes w/256-predictors and using "fitcecoc" and "predict" but having problems plotting the mixed-model, decision boundaries.
Any suggestions?
predictorExtractionFcn = @(x) array2table(x, 'VariableNames', predictorNames); svmPredictFcn = @(x) predict(classificationSVM, x); trainedClassifier.predictFcn = @(x) svmPredictFcn(predictorExtractionFcn(x));
predictorNames = {'column_1', 'column_2', 'column_3', 'column_4', 'column_5', 'column_6', 'column_7', 'column_8', 'column_9', 'column_10', 'column_11', 'column_12', 'column_13', 'column_14', 'column_15', 'column_16', 'column_17', 'column_18', 'column_19', 'column_20', 'column_21', 'column_22', 'column_23', 'column_24', 'column_25', 'column_26', 'column_27', 'column_28', 'column_29', 'column_30', 'column_31', 'column_32', 'column_33', 'column_34', 'column_35', 'column_36', 'column_37', 'column_38', 'column_39', 'column_40', 'column_41', 'column_42', 'column_43', 'column_44', 'column_45', 'column_46', 'column_47', 'column_48', 'column_49', 'column_50', 'column_51', 'column_52', 'column_53', 'column_54', 'column_55', 'column_56', 'column_57', 'column_58', 'column_59', 'column_60', 'column_61', 'column_62', 'column_63', 'column_64', 'column_65', 'column_66', 'column_67', 'column_68', 'column_69', 'column_70', 'column_71', 'column_72', 'column_73', 'column_74', 'column_75', 'column_76', 'column_77', 'column_78', 'column_79', 'column_80', 'column_81', 'column_82', 'column_83', 'column_84', 'column_85', 'column_86', 'column_87', 'column_88', 'column_89', 'column_90', 'column_91', 'column_92', 'column_93', 'column_94', 'column_95', 'column_96', 'column_97', 'column_98', 'column_99', 'column_100', 'column_101', 'column_102', 'column_103', 'column_104', 'column_105', 'column_106', 'column_107', 'column_108', 'column_109', 'column_110', 'column_111', 'column_112', 'column_113', 'column_114', 'column_115', 'column_116', 'column_117', 'column_118', 'column_119', 'column_120', 'column_121', 'column_122', 'column_123', 'column_124', 'column_125', 'column_126', 'column_127', 'column_128', 'column_129', 'column_130', 'column_131', 'column_132', 'column_133', 'column_134', 'column_135', 'column_136', 'column_137', 'column_138', 'column_139', 'column_140', 'column_141', 'column_142', 'column_143', 'column_144', 'column_145', 'column_146', 'column_147', 'column_148', 'column_149', 'column_150', 'column_151', 'column_152', 'column_153', 'column_154', 'column_155', 'column_156', 'column_157', 'column_158', 'column_159', 'column_160', 'column_161', 'column_162', 'column_163', 'column_164', 'column_165', 'column_166', 'column_167', 'column_168', 'column_169', 'column_170', 'column_171', 'column_172', 'column_173', 'column_174', 'column_175', 'column_176', 'column_177', 'column_178', 'column_179', 'column_180', 'column_181', 'column_182', 'column_183', 'column_184', 'column_185', 'column_186', 'column_187', 'column_188', 'column_189', 'column_190', 'column_191', 'column_192', 'column_193', 'column_194', 'column_195', 'column_196', 'column_197', 'column_198', 'column_199', 'column_200', 'column_201', 'column_202', 'column_203', 'column_204', 'column_205', 'column_206', 'column_207', 'column_208', 'column_209', 'column_210', 'column_211', 'column_212', 'column_213', 'column_214', 'column_215', 'column_216', 'column_217', 'column_218', 'column_219', 'column_220', 'column_221', 'column_222', 'column_223', 'column_224', 'column_225', 'column_226', 'column_227', 'column_228', 'column_229', 'column_230', 'column_231', 'column_232', 'column_233', 'column_234', 'column_235', 'column_236', 'column_237', 'column_238', 'column_239', 'column_240', 'column_241', 'column_242', 'column_243', 'column_244', 'column_245', 'column_246', 'column_247', 'column_248', 'column_249', 'column_250', 'column_251', 'column_252', 'column_253', 'column_254', 'column_255', 'column_256'}; predictors = inputTable(:, predictorNames); response = inputTable.column_257;
0 Comments
Answers (0)
See Also
Categories
Find more on Classification in Help Center and File Exchange
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!