Global & Random Recommendations | Overview

This feature is available to Customer Marketing subscribers.

Global Recommendations

Once you select and prioritize products as Global Recommendations, these products are recommended to all your customers. Global Recommendations can be used to heavily promote newly launched, overstocked, or clearance items over all other products. Global Recommendations can be used alone or in conjunction with Randomized Recommendations, but Global Recommendations will always be promoted first if possible.

You can have up to 30 Global Recommendations, but make sure to have products chosen from each of your stores since recommendations are store-specific.

Randomized Recommendations

Products included as Randomized Recommendations are promoted to all your customers in no specific priority and are useful when you want to promote a wide variety of your products. Randomized Recommendations can be used alone or in conjunction with Global Recommendations, but Global Recommendations will always be promoted first if possible.

You can exclude products from being recommended randomly, but make sure to have products included from each of your stores since recommendations are store-specific.

If you have Global Recommendations and Randomized Recommendations enabled for one of your stores then they will work together to make sure each customer receives the full quantity of recommendations.

For Example

If one of your customer's purchases your Global Recommendation #1 and Global Recommendation #2 and you only have three Global Recommendations specified, ShippingEasy will include Global Recommendation #3 and two Randomized Recommendations on your packing slip, shipment notification, or Automated Email.

ShippingEasy will not recommend:
  • Inactive products
  • Products without images
  • Products that are not linked to a store
  • Products that your customer just purchased
  • Products not sold on Shopify, eBay, Volusion, WooCommerce, or BigCommerce

Comments

Add a Comment

Please sign in to leave a comment.

    Tags:
  • #pendo
  • answerbot_article_public
  • customers recommendations
  • customers recommendations global
  • customers recommendations randomized