I am building a model with 3 classes: [0,1,2]
After training, the .predict
function returns a list of percentages instead.
I was checking the keras documentation but could not figure out, what I did wrong.
.predict_classes
is not working anymore, and I did not have this problem with previous classifiers. I already tried different activation functions (relu, sigmoid etc.)
If I understand correctly, the number inDense(3...)
defines the amount of classes.
outputs1=Dense(3,activation='softmax')(att_out)
model1=Model(inputs1,outputs1)
model1.summary()
model1.compile(optimizer="adam", loss="sparse_categorical_crossentropy", metrics=['accuracy'])
model1.fit(x=text_pad,y=train_y,batch_size=batch_size,epochs=epochs,verbose=1,shuffle=True)
y_pred = model1.predict(test_text_matrix)
Output example:
[[0.34014237 0.33570153 0.32415614]
[0.34014237 0.33570153 0.32415614]
[0.34014237 0.33570153 0.32415614]
[0.34014237 0.33570153 0.32415614]
[0.34014237 0.33570153 0.32415614]]
Output I want:
[1,2,0,0,0,1,2,0]
Thank you for any ideas.
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