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US Patent 10460235 Data model generation using generative adversarial networks

Patent 10460235 was granted and assigned to Capital One on October, 2019 by the United States Patent and Trademark Office.

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Patent abstractTimelineTable: Further ResourcesReferences
Is a
Patent
Patent

Patent attributes

Patent Applicant
Capital One
Capital One
Current Assignee
Capital One
Capital One
Patent Jurisdiction
United States Patent and Trademark Office
United States Patent and Trademark Office
Patent Number
10460235
Patent Inventor Names
Mark Watson21
Jeremy Goodsitt21
Kate Key21
Kenneth Taylor21
Reza Farivar21
Vincent Pham21
Anh Truong21
Austin Walters21
...
Date of Patent
October 29, 2019
Patent Application Number
16151385
Date Filed
October 4, 2018
Patent Citations Received
‌
US Patent 12118473 Statistically-representative sample data generation
1
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US Patent 11640561 Dataset quality for synthetic data generation in computer-based reasoning systems
2
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US Patent 11645551 Presenting inference models based on interrelationships
3
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US Patent 11657292 Systems and methods for machine learning dataset generation
4
‌
US Patent 11675921 Device and method for secure private data aggregation
5
‌
US Patent 11694080 Systems and methods for generating datasets for model retraining
6
‌
US Patent 11704169 Data model generation using generative adversarial networks
7
‌
US Patent 11710034 Misuse index for explainable artificial intelligence in computing environments
8
...
Patent Primary Examiner
‌
Alan Chen
Patent abstract

Methods for generating data models using a generative adversarial network can begin by receiving a data model generation request by a model optimizer from an interface. The model optimizer can provision computing resources with a data model. As a further step, a synthetic dataset for training the data model can be generated using a generative network of a generative adversarial network, the generative network trained to generate output data differing at least a predetermined amount from a reference dataset according to a similarity metric. The computing resources can train the data model using the synthetic dataset. The model optimizer can evaluate performance criteria of the data model and, based on the evaluation of the performance criteria of the data model, store the data model and metadata of the data model in a model storage. The data model can then be used to process production data.

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