This you find around the ๐ŸŒ Internet
๐Ÿ” Web search with Google โ€ข Bing โ€ข DuckDuckGo โ€ข Marginalia โ€ข Reddit โ€ข Spotify โ€ข TikTok โ€ข Tootfinder โ€ข X โ€ข Yandex โ€ข Youtube โ€ข YTM
This you find in the ๐Ÿ›๏ธ Agora
๐Ÿค– AI assistant on 'Collaborative_Filtering'
Generative AI services provided by Mistral AI. To save a generation into the Agora, for now please copy/paste into the document Stoa above.

Generating text...


๐Ÿ—ฃ๏ธ Stoas for [[Collaborative_Filtering]]
A Stoa is a public space where people can meet and collaborate.
๐Ÿ“– Document at https://doc.anagora.org/collaborative_filtering
๐Ÿ“น Meeting at https://framatalk.org/collaborative_filtering
๐Ÿ“š Node [[collaborative_filtering]]
๐Ÿ““ garden/KGBicheno/Artificial Intelligence/Introduction to AI/Week 3 - Introduction/Definitions/Collaborative_Filtering.md by @KGBicheno

collaborative filtering

Go back to the [[AI Glossary]]

#recsystems

Making predictions about the interests of one user based on the interests of many other users. Collaborative filtering is often used in recommendation systems.

Loading pushes...

Rendering context...

๐Ÿ“š Node [[collaborative filtering]] pulled by Agora

Collaborative filtering (CF) is a technique used by recommender systems.[1] Collaborative filtering has two senses, a narrow one and a more general one.[2]

In the newer, narrower sense, collaborative filtering is a method of making automatic predictions (filtering) about the interests of a user by collecting preferences or taste information from many users (collaborating). The underlying assumption of the collaborative filtering approach is that if a person A has the same opinion as a person B on an issue, A is more likely to have Bโ€™s opinion on a different issue than that of a randomly chosen person. For example, a collaborative filtering recommendation system for preferences in television programming could make predictions about which television show a user should like given a partial list of that userโ€™s tastes (likes or dislikes).[3] Note that these predictions are specific to the user, but use information gleaned from many users. This differs from the simpler approach of giving an average (non-specific) score for each item of interest, for example based on its number of votes.