The Toronto-Dominion Bank
NOISE CONTRASTIVE ESTIMATION FOR COLLABORATIVE FILTERING

Last updated:

Abstract:

A recommendation system models unknown preferences as samples from a noise distribution to generate recommendations for an online system. Specifically, the recommendation system obtains latent user and item representations from preference information that are representations of users and items in a lower-dimensional latent space. A recommendation for a user and item with an unknown preference can be generated by combining the latent representation for the user with the latent representation for the item. The latent user and item representations are learned to discriminate between observed interactions and unobserved noise samples in the preference information by increasing estimated predictions for known preferences in the ratings matrix, and decreasing estimated predictions for unobserved preferences sampled from the noise distribution.

Status:
Application
Type:

Utility

Filling date:

20 Aug 2019

Issue date:

5 Mar 2020