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I have one question. I want to print a confusion matrix. my model is functional api of keras. and model = Model(inputs=[data_input], outputs=[output_1, output_2])

output_1 = 9 classes output_2 = 5 classes

My multi-classification model

data_input = Input(shape=(trainX.shape[1], trainX.shape[2]))

Conv1 = Conv1D(filters=50, kernel_size=4, padding='valid',  activation='relu', strides=1)(data_input)
Conv1 = MaxPooling1D(pool_size=2)(Conv1)

Conv2 = Conv1D(filters=50, kernel_size=4, padding='valid', activation='relu', strides=1)(Conv1)
Conv2 = MaxPooling1D(pool_size=2)(Conv2)

Conv3 = Conv1D(filters=50, kernel_size=4, padding='valid', activation='relu', strides=1)(Conv2)
Conv3 = MaxPooling1D(pool_size=2)(Conv3)

Classification1 = LSTM(128, input_shape=(47, 50), return_sequences=False)(Conv3)
Classification2 = GRU(128, input_shape=(47, 50), return_sequences=False)(Conv3)

activity = Dense(9)(Classification1)
activity = Activation('softmax')(activity)

speed = Dense(5)(Classification2)
speed = Activation('softmax')(speed)

model = Model(inputs=[data_input], outputs=[activity, speed])

model.compile(loss= 'categorical_crossentropy' , optimizer='adam', metrics=[ 'accuracy' ])
print(model.summary())

history = model.fit(trainX, {'activation_1': trainY_Activity, 'activation_2': trainY_Speed},
          validation_data=(testX, {'activation_1': testY_Activity, 'activation_2': testY_Speed}),
          epochs=epochs, batch_size=batch_size, verbose=1, shuffle=False)
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  • Once confusion matrix is essentialy 2D, for your multi classification case I can only think in these 2 approaches: make 2 confusion matrices, one for each output; OR combine all the possibilities of both classes (in this case 45 possibilites) and make the confusion matrix according to that. Oct 18, 2018 at 14:33
  • Have a look here: scikit-learn.org/stable/modules/generated/… you can use model.predict() to get y_predict. Oct 19, 2018 at 10:49
  • Thanks. Mete Han Kahraman, Hemerson Tacon. To Mete Han Kahraman : ok. I will try. To Hemerson Tacon : model.predict() can use only sequential() model. ex) model = Sequential() my model is non sequentail model. Oct 20, 2018 at 6:34

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