According to the CDC/NCHS National Vital Statistics, banks lose about 10 percent of their account deposits due to customers closing their account. While half of that loss is attributed to factors out of the bank's control, such as death, divorce, or displacement, the other half of loss is attributed to the customer's dissatisfaction with the bank's fees, rates, products, or lack of convenience. For a bank that handles nearly $700 million in deposits annually, losing $70 million due to customer loss will seriously curb their ability to grow.
A regional bank wanted to reduce customer attrition and learn how to predict which customers were likely to close their checking accounts within 90 days. This would give them the opportunity to take action to retain the customer.
Their traditional analytics tools didn't have the capacity to uncover patterns, and human analysis certainly won't work to analyze billions of data points in real time. The bank knew they could use machine learning to analyze their existing data to reveal trends and insights and predict future behaviors and outcomes, but they hadn't used it before.
For expert help with this project, they turned to New Era Technology. Our team had worked with them several times in the past and knew how to help them get the insight they needed.
Most machine learning projects take several months before seeing results. However, our client wanted to see a proof of concept quickly to determine how this would work and whether it would help them fulfill their goals. With a New Era Technology Machine Learning Jumpstart, we could help them meet this objective.
During our Machine Learning Jumpstart, we assess the key business problem, assess the data, and build a machine learning model that delivers answers fast. To do this, we follow a specific, four-step plan that includes:
While providing the machine learning model was our highest priority, we also wanted to help educate the bank's team on key elements of machine learning, such as the process for training models and the process for generating predictions. This would occur organically by working side by side with their team.
The bank wanted to use machine learning to predict customer attrition more effectively than how they could do so through traditional analytics. They also wanted to understand the key metrics for evaluating machine learning models.
In the secondary phase, we could optimize the model to capture model efficacy. This will allow the bank to optimize and expand the use case or use the model as a template that can be modified for one of the other use cases.
The entire proof of concept took eight weeks, and the bank is now in possession of machine learning models that can be implemented in marketing campaigns in the next phase.