Algolia Recommend
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Algolia Recommend lets you display recommendations on your website. Recommendations encourage users to expand their search and browse more broadly. Users can jump to similar or complementary items if they don’t find a precise match.
How Recommend works
Recommendations rely on supervised machine learning models that are trained on your product data and user interactions.
Recommend uses two different algorithm types: collaborative filtering and content-based filtering.
- Collaborative filtering analyzes user events from the last 30-90 days.
Recommend creates a table of
userToken
andobjectID
which show how many times each user interacted with each record (object). Recommend then uses a collaborative filtering algorithm to find other records that are similar or frequently bought together:- Similar if the same set of users interacts with them.
- Frequently bought together if the same set of users bought them.
- Content-based filtering analyzes key attributes of items, such as their titles or descriptions, to find similarities.
Recommend models
Algolia Recommend builds models from your index and user events,
based on supervised machine learning algorithms.
Given an objectID
(source item or viewed item), the trained model recommends other related objectID
s (recommendations).
Frequently Bought Together
The Frequently Bought Together model recommends items that are likely to be bought together. To find such items, it looks at conversion events, such as a purchase. If the same user buys two or more items on the same day, they are considered as being bought together. The model uses this information, including historical purchases, to suggest items likely to go well together.
Related Products and Related Content
The Related Products and Related Content models recommend items that are related to each other based on:
- User interactions (click and conversion events) (collaborative filtering)
- Attributes (content-based filtering). With content-based filtering, you can show related content instead of related products.
Content-based filtering for Related Products
Content-based filtering creates even more relevant recommendations than relying on collaborative filtering alone and allows you to show recommendations when you don’t have enough click and conversion events. With content-based filtering, you can maximize your catalog exposure so that users get relevant recommendations even on items that aren’t popular.
If you use content-based and collaborative filtering models, you’ll get a merged set of recommendations from both models.
Trending Items and Trending Facet Values
The Trending Items model looks for items in your product catalog that have recently become popular (based on conversion events). This could be global for the entire catalog or within a specific facet (category), like winter sweaters. The Trending Facet Values model looks for facet values that recently increased in popularity. For example, you can recommend trending facet values within the “categories” facet.
You can use both models together. For example, by showing trending categories on your home page in a carousel layout and in each carousel card, showing the trending items for each category.
Events requirements for the models
To create relevant recommendations, each model needs a minimum number of events or items with attributes. If the data collected from the last 30 days isn’t enough, the Frequently Bought Together and Related Products models extend the collection period to 90 days. The Trending Items and Trending Facet Values models only collect events from the last 30 days.
Each model also has a maximum number of events it can use for training. If there are too many events or items with attributes, the model will ignore them.
Each model generates up to 30 recommendations.
Model | Input type | Minimum number | Maximum number |
---|---|---|---|
Frequently Bought Together | Conversion events with two or more items | 1,000 | 3,000,000 |
Related Products | Click and conversion events | 10,000 | 3,000,000 |
Related Content | Items with values in their content-based attributes | 10 | 1,500,000 |
Trending Items | Conversion events | 500 | 3,000,000 |
Trending Facet Values | Conversion events | 500 | 3,000,000 |
Training frequency
Once you’ve set up a model for the first time, it will undergo training. After this initial training, models are re-trained once every day (you can’t change how often the model is trained). This ensures your recommendations stay up-to-date as your catalog changes over time.
The training process can start at any moment during the day. Determining how long it will take is impossible because it depends on your catalog size and the resources available.
Migrating from the Recommend beta
Algolia Recommend has been available since June 30, 2021. If you’re using a Recommend beta, you should migrate your beta indices and update your user interface.
Storage and format
In the beta, recommendations were stored in an Algolia index with the following naming convention: ai_recommend_${modelName}_${indexName}
.
For example:
ai_recommend_bought-together_mysourceindex
ai_recommend_related-products_mysourceindex
These beta indices were last updated on August 30, 2021.
After migrating your recommendations, you can delete the indices from the Recommend beta.
Updating your user interface
If you used the Recommendations
React component in the beta, see the upgrade guide for more information about updating to the latest Recommend UI library.
If you developed a custom component to show recommendations in your frontend, see the Recommend API reference for more information about the returned response.