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python - Neural Network and Binary classification Guidance

I have the following data (X) that is stored in a numpy array:

array([[ 0.82737724, -0.5924806 ,  0.43279337, ...,  0.91896631,
        -0.28188124,  0.58595414],
       [-1.56610693,  0.63878901,  0.43279337, ...,  1.28262456,
         1.16154512, -1.9423032 ],
       [ 0.82737724, -0.2846632 , -0.4745452 , ...,  1.64628282,
        -0.28188124,  0.58595414],
       ...,
       [ 0.82737724,  0.        ,  0.43279337, ...,  1.67617254,
        -0.28188124,  0.58595414],
       [-1.56610693, -0.2846632 , -0.4745452 , ..., -1.64656796,
         0.27001707, -1.9423032 ],
       [ 0.82737724,  0.17706291, -0.4745452 , ...,  0.63501397,
        -0.28188124, -0.67817453]])

The array is much larger, and it gets fed into this neural network:

def base_model1():
    input_dim = X.shape[1]
    output_dim = 1
    model = Sequential()
    model.add(Dense(10, input_dim= input_dim,kernel_initializer ='normal', activation= 'tanh'))
    model.add(Dense(1, input_dim = 100, activation='sigmoid'))
    model.compile(loss='binary_crossentropy', optimizer='adam', metrics=['MeanSquaredError',
        'AUC',])
    
    return model
NN_clf = KerasClassifier(build_fn=base_model1, epochs=100, verbose=1)
NN_clf._estimator_type = "classifier"
trained = NN_clf.fit(X,y.values.reshape(-1,1))

Y is binary ones and zeroes. Where 1 means that will ride a taxi or 0 that will not ride a taxi.

predictions1 = trained.model.predict(X_test, verbose=1)
predictions1[:5]
array([[0.09048176],
       [0.34411064],
       [0.08842686],
       [0.0986585 ],
       [0.58971184]], dtype=float32)

My question stems from here if Sigmoid is an activation layer that performs binary classification or these probability outputs? Because I was expecting 1's and 0's I eventually assuming that these are probability outputs I created the following:

blank = []
for i in pd.DataFrame(predictions1)[0].to_list():
    if i > .50:
        blank.append(1)
    else:
        blank.append(0)

Much of my confusion lies in binary classification how does a neural network handle them, and how does one get 1's and 0's.

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When you pass some input for prediction to your binary classifier (sigmoid activation in its last layer), it will give you matrices in which each row represents the probability of those inputs to be in class 1. In your case:

predictions1 = trained.model.predict(X_test, verbose=1)
predictions1[:5]
array([[0.09048176],
       [0.34411064],
       [0.08842686],
       [0.0986585 ],
       [0.58971184]],

Here, each score represents the possibility of each sample in X_test[:5] to be in class 1. From this point, in order to get class labels (e.g. 1 and 0), by default API uses the 0.5 threshold to consider each score belong to class 1 and class 0; more specifically, score greater than 0.5 are considered to class 1. But of course, we can tweak the threshold. Here is one dummy example

import tensorflow as tf
import numpy as np  

img = tf.random.normal([20, 32], 0, 1, tf.float32)
tar = np.random.randint(2, size=(20, 1))

model = tf.keras.Sequential()
model.add(tf.keras.layers.Dense(10, input_dim = 32, 
                       kernel_initializer ='normal', activation= 'relu'))
model.add(tf.keras.layers.Dense(1, activation='sigmoid'))
model.compile(loss='binary_crossentropy', 
              optimizer='adam', metrics=['accuracy'])
model.fit(img, tar, epochs=5, verbose=2)

Epoch 1/5
1/1 - 0s - loss: 0.7058 - accuracy: 0.5500
Epoch 2/5
1/1 - 0s - loss: 0.6961 - accuracy: 0.5500
Epoch 3/5
1/1 - 0s - loss: 0.6869 - accuracy: 0.5500
Epoch 4/5
1/1 - 0s - loss: 0.6779 - accuracy: 0.6000
Epoch 5/5
1/1 - 0s - loss: 0.6692 - accuracy: 0.6000

Probabilities

y_pred = model.predict(img)
print(y_pred.shape)
y_pred[:10]

(20, 1)
array([[0.5317636 ],
       [0.4592613 ],
       [0.5876541 ],
       [0.47071406],
       [0.56284094],
       [0.5025074 ],
       [0.46471453],
       [0.38649547],
       [0.43361676],
       [0.4667967 ]], dtype=float32)

Class labels

(model.predict(img) > 0.5).astype("int32")
array([[1],
       [0],
       [1],
       [0],
       [1],
       [1],
       [0],
       [0],
       [0],
       [0],
       [0],
....
....

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