69
This time the accuracy was even better at around 89.5% (Figure
2-53
).
Now to test on the novelties data set. This time, you can find the AUC score because
there is a 50-50 split between anomalies and normal data.
The other two data sets, x_test
and x_validation, only had normal data, but this time it is possible for the model to
classify false positives and true negatives.
Run the code in Figure
2-54
.
Figure 2-53. The resulting percentage of data points in the predictions that were
considered normal
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