Automated Personalization (AP) activities in Adobe Target combine offers or messages, and uses advanced machine learning to match different offer variations to each visitor based on their individual customer profile to personalize content and drive lift.
Automated Personalization is available as part of the Target Premium solution. This feature is not available in Target Standard without a Target Premium license. For more information about the advanced features this license provides, see Target Premium.
Similarly to Auto-Target, Automated Personalization uses a Random Forest algorithm, a leading data science ensemble method, as its main personalization algorithm to determine the best experience to show a visitor. Automated Personalization can be valuable in the discovery phase of testing. It is also useful to allow machine learning to determine the most effective content when targeting diverse visitors. Over time, the algorithm learns to predict the most effective content and displays the content most likely to achieve your goals.
To find more information about how Automated Personalization differs from Auto-Target, see Auto-Target.
Marketers implement one file on their site, which lets them point and click any content and then visually create and select additional content options for that area using the Visual Experience Composer (VEC). Then, the algorithm automatically determines which piece of content to deliver to each individual visitor based on all the behavioral data that the system has about that visitor, providing a personalized experience. Because Automated Personalization can adapt to changes in visitor behavior, it can be run without a set end date to provide ongoing lift and personalization. This mode is sometimes referred to as “always-on.” The marketer does not need to run a test, analyze the results, then deliver a winner before realizing the lift found from optimization, which is a standard order of operations to implement the outcome of a standard A/B activity.
The following terms are useful when discussing Automated Personalization:
Term | Definition |
---|---|
Multi-armed bandit | A multi-armed bandit approach to optimization balances exploratory learning and exploitation of that learning. |
Random Forest | A leading machine-learning approach. In data-science terms, it is an ensemble classification or regression method that works by constructing many decision trees based on visitor and visit attributes. |
Thompson Sampling | The goal of Thompson Sampling is to determine which experience is the best overall (non-personalized), while minimizing the “cost” of finding that experience. Thompson sampling always picks a winner, even if there is no statistical difference between two experiences. For more information, see Thompson Sampling. |
Consider the following details when using Automated Personalization:
Random Forest is a leading machine-learning approach. In data-science terms, it is an ensemble classification or regression method that works by constructing many decision trees based on visitor and visit attributes. Within Target, Random Forest is used to determine which experience is expected to have the highest likelihood of conversion (or highest revenue per visit) for each specific visitor. For example, visitors who use Chrome, are gold loyalty members, and access your site on Tuesdays might be more likely to convert with Experience A. Visitors from New York might be more likely to convert with Experience B. For more information about Random Forest in Target, see Random Forest Algorithm.
Offline data, such as CRM information or customer-churn propensity scores, can be incredibly valuable when building personalization models. There are several ways to input data in Automated Personalization (AP) and Auto-Target personalization algorithms.
For information about the data automatically collected and used by Automated Personalization and Auto-Target personalization algorithms, see Automated Personalization Data Collection.
This video explains the activity types available in Target. Automated Personalization is discussed beginning at 5:55.