System for time-efficient assignment of data to ontological classes

Implementations are directed to receiving a set of training data including a plurality of data points, at least a portion of which are to be labeled for subsequent supervised training of a computer-executable machine learning (ML) model, providing at least one visualization based on the set of train...

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Hauptverfasser: Fano, Andrew E, Thompson, Jana A, Rogers, Phillip Henry, Neland, Joshua, Saxena, Tripti, Vinson, David William, Enemark, Allan
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creator Fano, Andrew E
Thompson, Jana A
Rogers, Phillip Henry
Neland, Joshua
Saxena, Tripti
Vinson, David William
Enemark, Allan
description Implementations are directed to receiving a set of training data including a plurality of data points, at least a portion of which are to be labeled for subsequent supervised training of a computer-executable machine learning (ML) model, providing at least one visualization based on the set of training data, the at least one visualization including a graphical representation of at least a portion of the set of training data, receiving user input associated with the at least one visualization, the user input indicating an action associated with a label assigned to a respective data point in the set of training data, executing a transformation on data points of the set of training data based on one or more heuristics representing the user input to provide labeled training data in a set of labeled training data, and transmitting the set of labeled training data for training the ML model.
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subjects CALCULATING
COMPUTER SYSTEMS BASED ON SPECIFIC COMPUTATIONAL MODELS
COMPUTING
COUNTING
ELECTRIC DIGITAL DATA PROCESSING
PHYSICS
title System for time-efficient assignment of data to ontological classes
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