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Group

Name

Short description

1

Visitor Journey Personalization (VJP)

Views > Low/High End

Promote products or content in the same Price Quadrant as previously viewed products.
Each product is connected to a price percentile according to its group (e.g.: category), lower percentiles (e.g.: <20%) are labeled Low-End while top percentiles (e.g.. >80%) are labeled High-End.

2

Customer Journey Personalization (CJP)

Purchases > Low/High End

Promote products or content in the same Price Quadrant as previously bought products.
Each product is connected to a price percentile according to its group (e.g.: category), lower percentiles (e.g.: <20%) are labeled Low-End while top percentiles (e.g.. >80%) are labeled High-End.

3

Customer Journey Personalization (CJP)

Wish-list > Products

Wish-list > Products Attributes

Wish-list > Products Discovery Tags

Wish-list > Products Defining Tags

Promote products

  • currently in the wish-list of the visitor

  • matching the values of attributes of products in the wish-list of the visitor

  • matching the Discovery/Defining Tags of products in the wish-list of the visitor

4

Visitor Journey Personalization (VJP)

Basket > Products Attributes

Basket > Products Discovery Tags

Basket > Products Defining Tags

Promote products

  • matching the values of attributes of products in the basket of the visitor

  • matching the Discovery/Defining Tags of products in the basket of the visitor

5

Visitor Journey Personalization (VJP)

Views > Smart Bestsellers on Clustering

Best-selling trends within the Cluster the visitor is predicted to belong based on his prior product views.

Customer Clustering distributes all customers into clusters based on their purchase history

6

Customer Journey Personalization (CJP)

Purchases > Smart Bestsellers on Clustering

Best-selling trends within the Cluster the customer belongs.

Customer Clustering distributes all customers into clusters based on their purchase history