Reading Time: < 1 minutes
- Recommendation engines across digital entertainment services and social media broadly use two design approaches.
- The first one is content-based recommendations, and the second one is called collaborative filtering.
- Any movie/series we watch across any platform has several variables.
- Let’s say you love the movie The Departed.
- One variable is the category/genre — this one would fit into, say, Crime, Thriller, Action, or maybe Drama.
- And then comes the star cast (Leonardo DiCaprio, Matt Damon, Jack Nicholson, Vera Farmiga, etc.) Martin Scorsese (the director).
- Another variable could be the period when it was released – the mid-2000s.
- One more could be the storyline — based on gangsters, for example.
- Now, the content-based recommendation design would curate options on your home screen based on the variables we listed above.
- The system starts with in-depth information about a title’s characteristics and then searches for other titles with similar qualities.
- Now, the more you watch, the more input you provide to the content-based engine to sharpen its offering.
- The second approach—collaborative filtering—is simpler, and we often see it as “people who liked this also liked…”.
- The collaborative filters don’t have deep knowledge about the product, but they work by bucketing people into groups based on underlying tastes or personality.
- But these are dynamic groups — you are moved from one group to the other based on your viewing pattern.
- Again the more you watch, the more information the algorithm will collect and more precisely, it will place you in a group, and better its recommendations would get over time.
- Netflix, like Spotify, combines both the recommendation engines to curate your recommendations.
- And it is still easier to categorise movies — music is trickier.
- Imagine an algorithm sifting through information such as “a dub production, a reggae feel, acoustic rhythm piano, use of a string ensemble and major key tonality.”
Also Read:
How does Netflix calculate $dollar value for its shows/movies?
Image courtesy of Cottonbro through Pexels
Reference shelf :