ITERATED TRAINING OF MACHINE MODELS WITH DEDUPLICATION

A computer-implemented method includes defining model attributes including a training iteration value that defines a set of training iterations to be used in machine learning to associate portions of feedback data with a set of topic groups based on similarities in concepts conveyed in the feedback...

Full description

Saved in:
Bibliographic Details
Main Authors Shah, Pritesh J, Markson, Christopher R, Meltabarger, Logan R
Format Patent
LanguageEnglish
Published 11.04.2024
Subjects
Online AccessGet full text

Cover

Loading…
More Information
Summary:A computer-implemented method includes defining model attributes including a training iteration value that defines a set of training iterations to be used in machine learning to associate portions of feedback data with a set of topic groups based on similarities in concepts conveyed in the feedback data. The method includes removing at least some of the confidential information from the feedback data. The method includes receiving a topic model number selection that indicates a subset of the set of topic groups. The method includes using machine learning to train a machine model based on the model attributes and the topic model number selection. The method includes generating a display showing at least one of a topic cluster graph or a word cloud based on the machine model.
Bibliography:Application Number: US202318543804