In Fashion:
When a shopper views a pair of pants, “You May Also Like” surfaces similar styles, cuts, and colors—other pants and complementary pieces that match their taste, keeping them exploring your catalog.
The "You May Also Like" algorithm surfaces products similar to the one a visitor is viewing—based on attributes, behavior, and what similar shoppers explored—keeping people browsing and lifting product discovery.
Start Free TrialWhen a shopper views a pair of pants, “You May Also Like” surfaces similar styles, cuts, and colors—other pants and complementary pieces that match their taste, keeping them exploring your catalog.
A shopper viewing one toy sees similar toys—same age range, franchise, or play category—so they can compare alternatives and find the perfect match without leaving the page.
A customer viewing a tablet sees similar models and comparable devices at different price points, helping them weigh options and find the right fit faster.
When a traveler views one destination or hotel, “You May Also Like” surfaces comparable stays and trips that match their budget and style, keeping them inspired.
This algorithm surfaces products similar to the one a visitor is viewing — based on attributes, behavior, and what similar shoppers explored — across product pages, listing pages, follow-up emails, and on-site sliders.
This e-commerce recommendation algorithm surfaces products similar to the item being viewed — by attributes, category, and the behavior of similar shoppers — deepening product discovery and time on site.
Use this algorithm to display similar-product recommendations with Product Bundling on category or listing pages for each visitor. Learn more about Personyze’s recommendation engine algorithms for e-commerce.
ElectronicsWebsite example
FashionWebsite example
When a visitor has recently purchased an item, you can follow up with an email containing cross-sale recommendations — items that other customers frequently bought together with that product. This encourages return visits and repeat purchases.
Example: an email sent two hours after purchase shows complementary products. Learn more about automated, personalized, and targeted emails.
Cross-sale recommendations can be added to any transactional message such as purchase confirmations, verification emails, or existing templates — without coding or IT integration. Learn more about adding email recommendations to transactional campaigns.
A responsive cross-sale slider showcases items that were frequently bought by customers who also bought the current item.
MobileScreen
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AI Recommendation Engine — the algorithms behind product, content, and email recommendations.
Email Personalization — trigger personalized follow-ups and add recommendations to transactional templates.
Website Personalization — adapt headlines, layouts, and offers to each visitor.
See Pricing Plans — transparent pricing — start small, scale as you grow.
Demo — “Customers Who Bought This Item Also Bought” cross-sale algorithm examples across product pages and emails.
Harness AI to show each visitor exactly what they are most likely to be interested in. Choose from algorithms for anonymous visitors on the homepage, “buy-it-together” on product pages, algorithms specifically for emails, items on sale from the visitor’s wishlist, or “Buy It Again” for repeat purchases. Build strategies that perform best for your store.