Using multistage offset models to cross-sell products, create growth
You have the capability to use the data you currently have to find the right customer the right product at the right time.
What is your strategy for up-selling or cross-selling to your existing clients?
When we ask insurance executives this question, they often shuffle their feet and avert their eyes while mumbling a few words that equate to, ‘We could be doing better…’
As companies have more access to data and sophisticated analytics, this is actually the right answer. Never before has there been more opportunity for innovative methods to identify the right clients at the right time.
Understanding the problem
Before talking about how to employ a multistage offset model, it is important to understand why the traditional approach of identifying opportunities is no longer working.
Most of the methods being used today (such as regressive and difference models) look at data at a single point in time. It is tedious, if not impossible, to track and account for customer attributes that impact insurance product decisions such as lifestyles, values, attitudes and opinions. They also aren’t flexible enough to add information down the road without creating significant inconsistencies. This can create a lot of false positives as marketing team plans and execute campaigns.
That means agents and brokers aren’t reaching the best prospects.
In this same data, there isn’t a metric that identifies customers that may not be ready for cross-selling or up-selling today but could be in the near future. That’s because the current models don’t have the capability to capture how existing customers have used products over years, thus creating a hole in recognizing how to serve clients as their needs change.
The next step
This is where the multistage offset model comes in. This approach works to statistically account for the shortcomings of the traditional model used to predict which customers and products at which time. In fact, it generalizes the difference model approach in a way that:
- Is scalable to multiple time frames;
- Captures the impact of both raw and change variables;
- Can revise past predictions as new data is obtained to create increasingly reliable estimates; and
- Accounts for uncaptured data without having to measure it.
Multistage modeling in action
Suppose you would like to predict how a set of customers will respond to a pitch for an additional rider such as valuable articles insurance, perhaps to cover jewelry or a wine-cellar. You might look at whether a customer has insured any new properties, the length of time the home has been insured, and whether there is insurance on any existing high value articles such as furs, art pieces or sports cars.
To make the prediction, we ‘d run a logistic regression model at least twice — at the end of Q2 and again at the end of Q4 of 2018 — to identify customers who are more likely to make such purchases.
Getting the job done
If you have the people who understand the math behind these models, then the methodology of this approach is quite simple to implement and can be used to enhance the predictive power for any Generalized Linear Modeling (GLM) based modeling or tree-based algorithms.
By doing this, you’ll discover there are three groups of customers:
- Those who are ready for your pitch now;
- Those who will be ready in the near future; and
- Those who simply are at a low probability of engaging in a cross-sell or up-sell opportunity.
To mine the opportunities in the middle group — the ones who will eventually be ready — the model can be run periodically to create additional data that will better predict which customer is ready and when.
So what does this mean?
You have the capability to use the data you currently have to find the right customer the right product at the right time. You also can operationalize the whole cycle to run periodically so that it is data-driven and delivers maximum return on investment.
That, after all, is what we’re all striving for.
Dheeraj Pandey is assistant vice president at EXL Analytics, a provider of data analytics solutions to financial organizations including P&C Insurance firms. To reach this contributor, send email to Dheeraj.pandey@exlservice.com.
This article is based on an upcoming webinar, “Application of multistage offset models in cross-selling and up-selling Insurance products” scheduled for May 3, 2018 at 12.30 p.m. EST. Here’s the link to register and attend: http://bit.ly/2HS9viJ
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