I'm working on a recommender system using two basic entities: users and objects. User similarity metrics will be pre-calculated based on existing user data. Then, as various users "flag" objects, objects will be recommended to each user (based on what's been flagged by similar users).
I'm new to NoSQL and unsure what the best way to model a) user flag events, and b) user-specific recommendations. Two options seem obvious to me:
1) "Heavyweight" option: store all relevant data in the primary objects. E.g.:
UserA FlaggedItems FlaggedItemA FlaggedItemB FlaggedItemC RecommendedItems RecommendedItemA RecommendedItemB RecommendedItemC
ItemA FlaggedBy UserA UserC UserR RecommendedTo UserB UserD UserX
2) "Lightweight" option: store "Flag" and "Recommendation" data in granular objects. E.g.:
FlagEvent FlaggedBy UserA FlaggedItem ItemA DateTime RecommendationEvent RecommendationTo UserC RecommendedItem ItemB DateTime
My assumption is that the lightweight method would be more scaleable as the User/Item objects wouldn't be constantly modified, client synchronization would involve grabbing user-specific FlagEvents and RecommendationEvents, and there would be no chance of multiple users trying to modify the same object simultaneously. But I'm new to CouchDB/noSQL and welcome thoughts from more experienced users. What would you suggest?