- Patent Title: Shared learning across separate entities with private data features
-
Application No.: US16258116Application Date: 2019-01-25
-
Publication No.: US11989633B2Publication Date: 2024-05-21
- Inventor: Ashish Goel , Peter Lofgren
- Applicant: Stripe, Inc.
- Applicant Address: US CA San Francisco
- Assignee: Stripe, Inc.
- Current Assignee: Stripe, Inc.
- Current Assignee Address: US CA South San Francisco
- Agency: BAKERHOSTETLER
- Main IPC: G06N20/20
- IPC: G06N20/20 ; G06F18/243 ; G06N3/084 ; G06N5/043

Abstract:
Embodiments herein use transfer learning paradigms to facilitate classification across entities without requiring the entities access to the other party's sensitive data. In one or more embodiments, one entity may train a model using its own data (which may include at least some non-shared data) and shares either the scores (or an intermediate representation of the scores). One or more other parties may use the scores as a feature in its own model. The scores may be considered to act as an embedding of the features but do not reveal the features. In other embodiments, parties may be used to train part of a model or participate in generating one or more nodes of a decision tree without revealing all its features. The trained models or decision trees may then be used for classifying unlabeled events or items.
Public/Granted literature
- US20200242492A1 SHARED LEARNING ACROSS SEPARATE ENTITIES WITH PRIVATE DATA FEATURES Public/Granted day:2020-07-30
Information query