Invention Grant
- Patent Title: Fraud score manipulation in self-defense of adversarial artificial intelligence learning
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Application No.: US15590921Application Date: 2017-05-09
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Publication No.: US11100506B2Publication Date: 2021-08-24
- Inventor: Scott Michael Zoldi , Qing Liu
- Applicant: FAIR ISAAC CORPORATION
- Applicant Address: US MN Roseville
- Assignee: FAIR ISAAC CORPORATION
- Current Assignee: FAIR ISAAC CORPORATION
- Current Assignee Address: US MN Roseville
- Agency: Mintz, Levin, Cohn, Ferris, Glovsky and Popeo, P.C
- Agent Michael Van Loy; Paul Brockland
- Main IPC: G06Q20/40
- IPC: G06Q20/40 ; G06N3/08 ; G06N20/00 ; G06N3/04

Abstract:
A system and method for programmatically revealing misleading confidence values in Fraud Score is presented to protect artificial intelligence models from adversarial neural networks. The method is used to reduce an adversarial learning neural network model effectiveness. With the score manipulation implemented, the adversary models are shown to systematically become less successful in predicting the true behavior of the Fraud detection artificial intelligence model and what it will flag as fraudulent transactions, thus reducing the true fraud dollars penetrated or taken by adversaries.
Public/Granted literature
- US20180330379A1 Fraud Score Manipulation in Self-Defense of Adversarial Artificial Intelligence Learning Public/Granted day:2018-11-15
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