Adobe Inc.
ITEM RECOMMENDATION TECHNIQUES
Last updated:
Abstract:
Techniques disclosed herein provide more efficient and more relevant item recommendations to users in large-scale environments in which only positive interest information is known. The techniques use a rank-constrained formulation that generalizes relationships based on known user interests in items and/or use a randomized singular value decomposition (SVD) approximation technique to solve the formulation to identify items of interest to users in an efficiently, scalable manner.
Status:
Application
Type:
Utility
Filling date:
13 Apr 2020
Issue date:
30 Jul 2020