Recommender systems: how can you help users find what they need?

Recommender systems have become a real boom, and today it is difficult to imagine any conventional Lamoda without the "Perhaps you will be interested in other products" block. We have prepared for you a detailed article on what recommender systems are and how they can benefit your business.

What are recommender systems?

— , , , . .

— Tik-Tok, . , .

. Spotify, «» . , .

4 :

  • (collaborative filtering).

  • (content-based).

  • (knowledge-based).

  • (hybrid).

.

(collaborative filtering)

, . , .

: . BMW . , . BMW . () , BMW.

, , last.fm. — . : , . - .

(content-based)

. , . : , , .. , , .

-, - . , IVI , - , ..

, , . : .

(knowledge-based)

- : , , . «content-based», . : case-based, demographic-based, utility-based, critique-based, whatever-you-want-based ..

. .

, Apple «reStore» , :

- .:

PS4 , , . , .

— . . , . , PlayStation 4 .

— . .

(hybrid)

, , « ». . . , .

- . - , . . . , Netflix 27 (!) .

:

  • ;

  • ;

  • ;

  • , .

. knowledge-based, — .

— / , . , .

:

  • ; , ; ; : , ..

  • .

«» / «» . , .. . , . , ( - ).

: / , , .. . . -, , . -, , , .

, . .

. , . , , . , .

, — . , , - .

, , , . , . , -, - , - , .

, - , . , .

. - .

DataSet . - -, . .

. — . , . , .

, , , .

-, . , - , . -, . (TensofFlow, Apple Core ML) (Google ML Kit). .

, . 3-6 .

, . , , , . , .

— ( , ). , , , «» .




All Articles