Invention Grant
- Patent Title: Method for reproducibility of deep learning classifiers using ensembles
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Application No.: US16886344Application Date: 2020-05-28
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Publication No.: US11574166B2Publication Date: 2023-02-07
- Inventor: Dipanjan Ghosh , Maria Teresa Gonzalez Diaz , Mahbubul Alam , Ahmed Farahat , Chetan Gupta , Lijing Wang
- Applicant: Hitachi, Ltd.
- Applicant Address: JP Tokyo
- Assignee: Hitachi, Ltd.
- Current Assignee: Hitachi, Ltd.
- Current Assignee Address: JP Tokyo
- Agency: Procopio, Cory, Hargreaves & Savitch LLP
- Main IPC: G06N3/04
- IPC: G06N3/04 ; G06N5/04 ; G06N3/08 ; G06N20/20

Abstract:
Example implementations described herein involve systems and methods for generating an ensemble of deep learning or neural network models, which can involve, for a training set of data, generating a plurality of model samples for the training set of data, the plurality of model samples generated from deep learning or neural network methods; and aggregating output of the model samples to generate an output of the ensemble models.
Public/Granted literature
- US20210374500A1 METHOD FOR REPRODUCIBILITY OF DEEP LEARNING CLASSIFIERS USING ENSEMBLES Public/Granted day:2021-12-02
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