Invention Grant
- Patent Title: Data source correlation techniques for machine learning and convolutional neural models
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Application No.: US17107865Application Date: 2020-11-30
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Publication No.: US11977993B2Publication Date: 2024-05-07
- Inventor: Thomas Guzik , Muhammad Adeel
- Applicant: Getac Technology Corporation , WHP Workflow Solutions, Inc.
- Applicant Address: TW SC Taipei
- Assignee: Getac Technology Corporation,WHP Workflow Solutions, Inc.
- Current Assignee: Getac Technology Corporation,WHP Workflow Solutions, Inc.
- Current Assignee Address: TW Taipei; US SC North Charleston
- Agency: Finnegan, Henderson, Farabow, Garrett & Dunner, L.L.P.
- Main IPC: G06N7/01
- IPC: G06N7/01 ; G06N20/00

Abstract:
A data model computing device receives a first data model with a first set of attributes, a first margin of error, a first set of predictions, and an underlying data set. Subsequently, the data model computing device receives a second data model with a second set of attributes, as the test data for a machine learning module. Based on the first and second data model, the machine learning function generates a second set of predictions and a second margin of error. The data model computing device performs a statistical analysis on the first and second set of predictions and the first and second margin of error to determine if the second set of predictions converge with the first set of predictions and second margin of error is narrower than the first margin of error, to determine if the second data model improves the prediction results of the machine learning module.
Public/Granted literature
- US20220172087A1 DATA SOURCE CORRELATION TECHNIQUES FOR MACHINE LEARNING AND CONVOLUTIONAL NEURAL MODELS Public/Granted day:2022-06-02
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