Which technique considers the characteristics and features of items to make recommendations based on their similarity to previously liked items by the user?Review LaterCollaborative filteringContent-based filteringActive learningReinforcement learning
Question
Which technique considers the characteristics and features of items to make recommendations based on their similarity to previously liked items by the user?Review LaterCollaborative filteringContent-based filteringActive learningReinforcement learning
Solution
The technique that considers the characteristics and features of items to make recommendations based on their similarity to previously liked items by the user is Content-based filtering.
Similar Questions
Which of the following techniques is commonly used in Recommendation Systems to suggest items based on user similarities?Review LaterCollaborative FilteringMatrix FactorizationContent-Based FilteringHybrid Filtering
Which type of collaborative filtering algorithm utilizes item-item similarities to generate recommendations?Question 23Answera. Item-based collaborative filteringb.Matrix factorizationc.Content-based filteringd.User-based collaborative filtering
Content-based filtering relies on which type of information?Review LaterUser behavior and preferencesItem attributes and characteristicsUser-item interactions and similaritiesNone of the above
Which technique is suitable for providing recommendations in the absence of user-item interaction data?Review LaterCollaborative FilteringContent-Based FilteringMatrix FactorizationHybrid Filtering
Recommendation systems based on collaborative filtering can suffer from the "cold start" problem.Review LaterTrueFalse
Upgrade your grade with Knowee
Get personalized homework help. Review tough concepts in more detail, or go deeper into your topic by exploring other relevant questions.