- Patent Title: Digital content control based on shared machine learning properties
-
Application No.: US15785329Application Date: 2017-10-16
-
Publication No.: US11544743B2Publication Date: 2023-01-03
- Inventor: Thomas William Randall Jacobs , Peter Raymond Fransen , Kevin Gary Smith , Kent Andrew Edmonds , Jen-Chan Jeff Chien , Gavin Stuart Peter Miller
- Applicant: Adobe Inc.
- Applicant Address: US CA San Jose
- Assignee: Adobe Inc.
- Current Assignee: Adobe Inc.
- Current Assignee Address: US CA San Jose
- Agency: FIG. 1 Patents
- Main IPC: G06Q30/02
- IPC: G06Q30/02 ; G06Q10/06 ; G06N7/00 ; G06N20/00 ; G06F8/20 ; G06F8/34

Abstract:
Application personalization techniques and systems are described that leverage an embedded machine learning module to preserve a user's privacy while still supporting rich personalization with improved accuracy and efficiency of use of computational resources over conventional techniques and systems. The machine learning module, for instance, may be embedded as part of an application to execute within a context of the application to learn user preferences to train a model using machine learning. This model is then used within the context of execution of the application to personalize the application, such as control access to digital content, make recommendations, control which items of digital marketing content are exposed to a user via the application, and so on.
Public/Granted literature
- US20190114672A1 Digital Content Control based on Shared Machine Learning Properties Public/Granted day:2019-04-18
Information query