Create a Look-Alike Model
Describes the required and optional steps that let you create a Look-Alike Model.
Model Builder Section
Model Builder consists of the Basic Information and Configuration sections. To create a model, complete the required fields in these two sections. Save your model to start the algorithm. Audience Manager sends you an automated notification after the first data run completes. After you receive the email, you can go to Trait Builder and create algorithmic traits.
- The modeling process runs only once if you create a model and do not build any traits with it.
- Build models from data sources that contain a meaningful amount of information. Models with insufficient data will run, but they will not return results.
- Do not create models with other algorithmic traits or segments.
- The automated email notification is sent one time only (after the first data run).
Build the Model
Follow the steps below to build a Look-Alike Model:
-
Go to Audience Data > Models and click Add New in the Look-Alike Modeling section.
-
In the Basic Information section
- Name the model.
- (Optional) Provide a brief description about the model.
- Set the status for the model to Active or Inactive. Inactive models will not run and will not produce any data.
-
In the Configuration section:
- Click Browse All Traits or Browse All Segments to select a trait or segment you want to model against. Search for traits by name, ID, description or data source. Click on a folder while searching to limit results to that folder and its subfolders. You can also filter traits by trait type (Folder Trait, Rule-based, Onboarded, and Algorithmic) or population type (Device ID and Cross-Device ID).
- Choose a 30, 60, or 90 day look-back period. This sets a time range for the model.
- The TraitWeight algorithm is selected by default.
- Select a data source from the Available Data list.
- Click Save when done.
- Click Browse All Traits or Browse All Segments to select a trait or segment you want to model against. Search for traits by name, ID, description or data source. Click on a folder while searching to limit results to that folder and its subfolders. You can also filter traits by trait type (Folder Trait, Rule-based, Onboarded, and Algorithmic) or population type (Device ID and Cross-Device ID).
Watch the video below for a detailed look at how cross-device metrics work.
Basic Information for Algorithmic Models
In Model Builder, the Basic Information settings let you create new or edit existing models. To create a new model, provide a name and move on to the Configuration settings. The description field is optional.
Configuration
In Model Builder, the Configuration section lets you add traits or segments to the model. In this section, select a baseline trait or segment, a look-back period, and data from your first and third-party data sources.
Prerequisites
Complete the required fields in the Basic Information section first.
Click the trait or segment button to see a list of all your traits or segments. Your selected segment or trait becomes the baseline that the system algorithms use for modeling.
Note: Select an onboarded trait, a rule-based trait, or a segment as baseline. Otherwise, your models will not run.
Watch the video below to learn how to create a first party look-alike model, so that you can find more of your own visitors who look like your converters.