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  2. Recommender system - Wikipedia

    en.wikipedia.org/wiki/Recommender_system

    A recommender system (RecSys), or a recommendation system (sometimes replacing system with terms such as platform, engine, or algorithm), is a subclass of information filtering system that provides suggestions for items that are most pertinent to a particular user.

  3. Cold start (recommender systems) - Wikipedia

    en.wikipedia.org/wiki/Cold_start_(recommender...

    In both cases, the cold start problem would imply that the user has to dedicate an amount of effort using the system in its 'dumb' state – contributing to the construction of their user profile – before the system can start providing any intelligent recommendations. [17] For example MovieLens, a web-based recommender system for movies, asks ...

  4. Matrix factorization (recommender systems) - Wikipedia

    en.wikipedia.org/wiki/Matrix_factorization...

    This is an example of a cold-start problem, that is the recommender cannot deal efficiently with new users or items and specific strategies should be put in place to handle this disadvantage. [ 12 ] A possible way to address this cold start problem is to modify SVD++ in order for it to become a model-based algorithm, therefore allowing to ...

  5. Item-item collaborative filtering - Wikipedia

    en.wikipedia.org/wiki/Item-item_collaborative...

    As in user-user systems, similarity functions can use normalized ratings (correcting, for instance, for each user's average rating). Second, the system executes a recommendation stage. It uses the most similar items to a user's already-rated items to generate a list of recommendations. Usually this calculation is a weighted sum or linear ...

  6. Collaborative filtering - Wikipedia

    en.wikipedia.org/wiki/Collaborative_filtering

    The user based top-N recommendation algorithm uses a similarity-based vector model to identify the k most similar users to an active user. After the k most similar users are found, their corresponding user-item matrices are aggregated to identify the set of items to be recommended.

  7. Pinterest (PINS) Q4 2024 Earnings Call Transcript - AOL

    www.aol.com/pinterest-pins-q4-2024-earnings...

    Image source: The Motley Fool. Pinterest (NYSE: PINS) Q4 2024 Earnings Call Feb 06, 2025, 4:30 p.m. ET. Contents: Prepared Remarks. Questions and Answers. Call ...

  8. Roblox (RBLX) Q4 2024 Earnings Call Transcript - AOL

    www.aol.com/finance/roblox-rblx-q4-2024-earnings...

    Once again high growth rates across really all of our key financial and operating metrics and surpassing our guidance in every single data point where we provided guidance in our Q3 earnings call.

  9. Knowledge-based recommender system - Wikipedia

    en.wikipedia.org/wiki/Knowledge-based...

    Knowledge-based recommender systems are often conversational, i.e., user requirements and preferences are elicited within the scope of a feedback loop.A major reason for the conversational nature of knowledge-based recommender systems is the complexity of the item domain where it is often impossible to articulate all user preferences at once.