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US Patent 11657269 Systems and methods for verification of discriminative models

Patent 11657269 was granted and assigned to Salesforce on May, 2023 by the United States Patent and Trademark Office.

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Is a
Patent
Patent
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Patent attributes

Patent Applicant
Salesforce
Salesforce
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Current Assignee
Salesforce
Salesforce
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Patent Jurisdiction
United States Patent and Trademark Office
United States Patent and Trademark Office
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Patent Number
116572690
Date of Patent
May 23, 2023
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Patent Application Number
165924740
Date Filed
October 3, 2019
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Patent Citations
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US Patent 11322244 System and method for determining anisomelia condition of a subject using image analysis and deep neural network learning
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US Patent 11295375 Machine learning based computer platform, computer-implemented method, and computer program product for finding right-fit technology solutions for business needs
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US Patent 10121104 System and method for anomaly detection via a multi-prediction-model architecture
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US Patent 10282663 Three-dimensional (3D) convolution with 3D batch normalization
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US Patent 10346721 Training a neural network using augmented training datasets
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US Patent 10503775 Composition aware image querying
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US Patent 10814815 System for determining occurrence of an automobile accident and characterizing the accident
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Patent Citations Received
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US Patent 12069082 Interpreting and remediating network risk using machine learning
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Patent Primary Examiner
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Mia M Thomas
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CPC Code
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G06N 3/0454
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G06N 20/20
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H03M 7/6011
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G06F 17/18
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G06N 3/08
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H03M 7/6005
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H03M 7/3059
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Verification of discriminative models includes receiving an input; receiving a prediction from a discriminative model for the input; encoding, using an encoder, a latent variable based on the input; decoding, using a decoder, a reconstructed input based on the prediction and the latent variable; and determining, using an anomaly detection module, whether the prediction is reliable based on the input, the reconstructed input, and the latent variable. The encoder and the decoder are jointly trained to maximize an evidence lower bound of the encoder and the decoder. In some embodiments, the encoder and the decoder are further trained using a disentanglement constraint between the prediction and the latent variable. In some embodiments, the encoder and the decoder are further trained without using inputs that are out of a distribution of inputs used to train the discriminative model or that are adversarial to the discriminative model.

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