Recommend items based on the user's past interaction with your platform
Introduction
Alie’s “End-User Interaction” recommendations rely on the user's past interaction with your platform which could be his/her likes, purchases, views, ratings, or browsing history.
Alie uses content-based filtering to understand a user’s behavior with the item’s attributes, which he/she reacts positively to. Once the system understands the behavior, a link is established between Users, Items & their attributes, and recommendations are made accordingly. For Ex. If a User ‘A’ has watched a movie named ‘M1’ of genre ‘action’, then Alie will check other movies of similar content or genre action and resulting items will be shown as commendations to the user.
Highlights
Highlights
Works with Minimum User Data
Avoid Cold Start Issue
Implement Using Alie CMS
CTA
Elevate User Experience with Personalized Recommendations
Alie’s “End-User Interaction” recommendations are independent of the actions performed by other users and rely more on item/content data. This type of filtering works to establish a similarity index between items, once the similarity is established Alie prioritizes the items to be recommended which are most similar.
Avoid cold start issue
Avoid Cold Start Issue
The cold-start problem occurs when items added to the catalog have very few interactions. This creates a problem for collaborative filtering algorithms because they rely on user-item interactions to make recommendations. Alie’s End-User Interaction algorithm is designed in such a way that it helps in reducing the cold start issue. Alie Recommendation Platform can start showing similar item recommendations even if there are very few user-item interactions. For Ex. If a user is signing up on an ecommerce site to buy a product then based on his purchase Alie can start recommending similar items.
Implement Using Alie CMS
Implement Using Alie CMS
Alie’s “End-User Interaction” algorithm is easy to implement. All you need to do is just login into Alie CMS, create a new project, add data using APIs or JS Plugins, select the “End-User Interaction” algorithm in the next tab and generate the final output (Recommendations). Subsequently, you can hook these recommendations on the appropriate pages of your website or app using APIs provided by Alie.
CTA
Get Your Free Trial Today, No Purchase Required
Recommendation Platform for your Website or App | Create Personalized Experiences
Already using a platform? Alie team will help with Data Migration, Customizations, and Integrations. Switch to Alie today!