Learn Before
Collaborative Filtering
This methodology is frequently used in recommendation problems. The examples include deciding which stories to show on social media feed, which movies to suggest to user and many more. In simple terms collaborative filtering finds what particular user liked and tries to find users with similar preferences and based on this information it would recommend to the current user the items that these other users liked.
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Data Science
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Collaborative Filtering
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Learn After
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