I've made a Keras LSTM model that reads in binary target values and is supposed to output binary predictions. However, the predictions aren't binary. A sample of my X and Y values is below:

```
X Y
5.06 0
4.09 1
4.72 0
4.57 0
4.44 1
6.98 1
```

What I'm trying to predict is if Xt+1 is going to be higher or lower than Xt. The Y value for Xt is 1 if Xt+1 is greater than Xt. My training X values are in the shape (932, 100, 1) for 932 samples, 100 for the "look back" sequence, and 1 for the features. The predictions I get look like:

```
Predictions
.512
.514
.513
```

I'm thinking these might be probabilities as my model accuracy is around 51%. Any ideas as to how to get them to be binary? Full model code is below:

```
# Defining network architecture
def build_model(layers):
model = Sequential()
model.add(LSTM(
input_dim=layers[0],
output_dim=layers[1],
return_sequences=True))
model.add(Dropout(0.2))
model.add(LSTM(
layers[2],
return_sequences=False))
model.add(Dropout(0.2))
model.add(Dense(
output_dim=layers[3]))
model.add(Activation("sigmoid"))
start = time.time()
model.compile(loss="binary_crossentropy", optimizer="rmsprop",metrics=['accuracy'],class_mode="binary")
print("> Compilation Time : ", time.time() - start)
return model
# Compiling model
model = build_model([1, 100, 500, 1])
```