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Next-best Action (NBA) is a strategy that helps businesses identify the most effective marketing actions to take to drive customers closer to a desired conversion event. It is designed to optimize marketing efforts and improve the return on investment (ROI) of marketing campaigns.
Figure 1. The MDP Framework.
Figure 2. Measuring NBA performanceHere's a simple way to set up an A/B test:
Figure 3. Example NBA dashboard.The metrics below (Figure 4) are a result of a Treasure Data internal A/B testing we performed for our NBA model using 90 days of historic web activity data for training, and 30 days of forward testing data. We applied a fixed simulated budget of $20,000 for the test.
Figure 4. Internal A/B testing.Below (Figure 5) is an example from our Audience Studio, where marketers can define Audiences and activate marketing campaigns via our user-friendly UI. This example segment combines two ML model outputs:
Next-best Product (from our recommendation engine model) and
Next-best Channel (from our NBA RL model). In this example, we created an Audience of all customers where the top recommended product is a
bike helmet, and the next-best channel is
Social.This segment will then be scheduled for an activation to various social advertising channels, so that whenever any of these users browse those social platforms, they will see an ad for a bike helmet.
Figure 5. Example segment from Audience Studio, combining two ML model outputs.
