Creating predictive models with Keras
Our data now contains the following columns:
amount, oldBalanceOrig, newBalanceOrig, oldBalanceDest, newBalanceDest, isFraud, isFlaggedFraud, type_CASH_OUT, type_TRANSFER, isNight
Now that we've got the columns, our data is prepared, and we can use it to create a model.
Extracting the target
To train the model, a neural network needs a target. In our case, isFraud
is the target, so we have to separate it from the rest of the data. We can do this by running:
y_df = df['isFraud'] x_df = df.drop('isFraud',axis=1)
The first step only returns the isFraud
column and assigns it to y_df
.
The second step returns all columns except isFraud
and assigns them to x_df
.
We also need to convert our data from a pandas DataFrame
to NumPy arrays. The pandas DataFrame
is built on top of NumPy arrays but comes with lots of extra bells and whistles that make all the preprocessing we did earlier possible. To train a neural network, however, we just need the underlying data...