I am about to build a web shop and need to come up with a solution of tracking user information, and based upon that suggest the users products they may like too and so build an individual user profile (what they like).
Information to be tracked/used for the algorithm, I thought should include:
- past orders
- wish list/bookmarks/favourites...
- search terms entered
- products viewed (and here also track and consider the "drop-off"-quote, meaning wether a user closes the site/goes back immediately or looks at more pictures/scrolls down (viewport) etc)
Products are assigned to categories as well as different attributes such as colors, tags etc. The table
product has relations with
The questions are:
1) How would you structure a database to track e.g. products viewed? Should it be just like this?:
2) If I want to calculate e.g. the users top 3 favourite colors based on colors of products the user bought, put on their wish list, bookmarked, viewed: can it be handled from a performance point of view to calculate which products should be recommended to this when querying the database every single time? Or do you update a user profile from time to time, storing only the already calculated favourite color at the moment based upon the tracked data and use the stored calculated data to find products that match this information?
How do big sites like facebook, amazon or pinterest do this? On pinterest you get suggestions for items you may like based on what items you clicked on before. How do they handle this?