Adobe Inc.
GENERATING A PERSONALIZED PREFERENCE RANKING NETWORK FOR PROVIDING VISUALLY-AWARE ITEM RECOMMENDATIONS

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Abstract:

The present disclosure relates to a fashion recommendation system that employs a task-guided learning framework to jointly train a visually-aware personalized preference ranking network. In addition, the fashion recommendation system employs implicit feedback and generated user-based triplets to learn variances in the user's fashion preferences for items with which the user has not yet interacted. In particular, the fashion recommendation system uses triplets generated from implicit user data to jointly train a Siamese convolutional neural network and a personalized ranking model, which together produce a user preference predictor that determines personalized fashion recommendations for a user.

Status:
Application
Type:

Utility

Filling date:

15 Jul 2021

Issue date:

4 Nov 2021