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CHURN PREVENTION WITH ADVANCED ANALYTICS
Sergio Sánchez
linkedin.com/in/sergiosanchezjorge
Analyze hundreds of anonymized clients from Santander Bank to predict if a customer is satisfied or dissatisfied with their banking experience.
OBJECTIVE
DATA SET
The bank database used here was taken from customers of Santander Bank. It contains information about 76019 customers of a bank with 370 attributes.
This adds up to a total of 28.127.030 data.
Evaluate which variables can influence churn.
VARIABLES IMPORTANCE
The máximum correlation (0,15046) is yield between the variable num_var30 and the target variable.
Configure the neural network architecture. This model takes the attributes of clients to predict their likelihood of being dissatisfied customers.
NEURAL NETWORK
LOSS INDEX
If the weighted squared error has a value of unity then the neural network ispredicting the data 'in the mean', while a value of zero means perfect predictionof the data.
The error term is the weighted squared error. It weights the squared error of negatives and positives values.
TESTS
The next step is to evaluate the performance of the trained neural network.
Confusion matrix
Binary classification
ROC curve
The probability that client 1 is dissatisfied is 27%: the bank will not contact this customer.
The probability that client 4 is dissatisfied is 61%: the bank will contact this customer.
RESULTS
artelnics.comArtificial Intelligence Techniques, SL
Carretera de Madrid 1337900 Santa Marta de Tormes
Salamanca (Spain)Telephone: +34 923 133 612 Ext.13
E-mail: [email protected]
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