January 2018
Intermediate to advanced
470 pages
11h 9m
English
Detecting and preventing fraud in financial companies, such as banks, insurance companies, and credit unions, is an important task in order to see a business grow. So far, in the previous chapter, we have seen how to use classical supervised machine learning models; now it's time to use other, unsupervised learning algorithms, such as autoencoders.
In this chapter, we will use a dataset having more than 284,807 instances of credit card use and for each transaction, where only 0.172% transactions are fraudulent. So, this is highly imbalanced data. And hence it would make sense to use autoencoders to pre-train a classification model and apply an anomaly detection technique to predict ...
Read now
Unlock full access