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United States of America Patent

APP PUB NO 20240070474A1
SERIAL NO

17894580

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ATTORNEY / AGENT: (SPONSORED)

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Abstract

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In an example embodiment, a random forest machine learning algorithm is used to create and/or identify rules to apply to an individual entity in a computer system that has a plurality of entities, each with a number of rules. More precisely, rule predicates are used as features of a random forest model built to predict a particular outcome (e.g., a transaction that is fraudulent). Hyperparameters of the random forest model are varied and iterated. A classifier is used to calculate feature importance for all features in the training data. Feature importance may be calculated using permutation feature importance. The N “most important” features are then found from this set. The N “most important” features are then used to find rules above a certain precision and recall rate. These rules may then be backtested and the best rules can be used to generate additional rules.

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Patent Owner(s)

Patent OwnerAddress
STRIPE INC510 TOWNSEND ST SAN FRANCISCO CA 94103

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Inventor(s)

Inventor Name Address # of filed Patents Total Citations
Hegde, Chiranth Manjunath Seattle, US 2 0
SAGALOVSKY, Ariel San Francisco, US 1 0

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