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AIAACME

CUSTOMER VISIT PREDICTION AND PRODUCT CANNIBALIZATION MODEL

ABOUT

POWER OF ARTIFICIAL INTELLIGENCE IN THE BANKING SECTOR

We are an AI service providing company, we have been in this field of work for a very long time. We held pride in ourselves for using the best tools out there in the market to deal with our clients.

CHALLENGES

BUILDING A CUSTOMER CHURN PREDICTION MODEL

The main challenge of this use case is to predict whether the high valued customer will become churn or not. The model has to be built for the existing customers and not applicable for new customers. Here we are considering high valued customers as the customers having amount more than threshold amount in their account. The solution has to address multiple solutions.

SOLUTIONS

ARTIFICIAL INTELLIGENCE IN BANKING ACCELERATES DIGITIZATION IN END-TO-END BANKING AND FINANCE PROCESSES.

We developed the model and deployed using Machine learning and deep learning algorithms and few other deployment tools. By analysing the customer demographics and few other features model for existing has been built. The churn problem will cause the bank to encounter the cash rotation problems and few other problems. This model helped to identify the churn at the early stages which helped in churn customer retention.

BENEFITS

The AI & Analytics Engine can analyse a variety of data, including new data sources, and at relatively complex interactions between behaviours and individual history and recommend models that predict the risk of the customer churning. In addition, The Engine’s models can identify the variables that have the most importance to this prediction, allowing FIs to act to improve those areas for customers. The Engine can also be used to recommend the next best offer that will have the highest likelihood of retaining the individual customer.

RESULTS

Our efficient models helped the bank to identify potential leavers and then decide on the right course of action to prevent their departure. As a result, our client has optimized related processes and is now better able to identify customers at risk of churn and prevent churn.

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