REDUCING FALSE POSITIVES USING CUSTOMER DATA AND MACHINE LEARNING

Number of patents in Portfolio can not be more than 2000

United States of America

APP PUB NO 20250014043A1
SERIAL NO

18890265

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Abstract

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A method of detecting whether electronic fraud alerts are false positives includes receiving data detailing a financial transaction, inputting the data into a rules-based engine that determines whether to generate an electronic fraud alert for the financial transaction based upon the data, and, when an electronic fraud alert is generated, inputting the data into a machine learning program trained to identify one or more facts indicated by the data. The method may also include determining whether the identified facts can be verified by customer data and, in response to determining that the facts can be verified, retrieving or receiving first customer data. The method may further include verifying that the electronic fraud alert is not a false positive based upon analysis of the first customer data, and transmitting the verified electronic fraud alert to a mobile device of the customer to alert the customer to fraudulent activity.

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Patent Owner(s)

Patent OwnerAddress
STATE FARM MUTUAL AUTOMOBILE INSURANCE COMPANYONE STATE FARM PLAZA A-3 BLOOMINGTON IL 61710

International Classification(s)

Inventor(s)

Inventor Name Address # of filed Patents Total Citations
Batra, Reena Alpharetta, US 50 427
Craig, Bradley A Normal, US 36 257
Dua, Puneit Bloomington, US 84 514
Flowers, Elizabeth Bloomington, US 53 426
Kramme, Timothy Parker, US 35 255
Phillips, Shanna L Bloomington, US 84 425
Ruestman, Russell Minonk, US 35 255
Valero, Miriam Bloomington, US 35 255

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