SYSTEMS AND METHODS FOR DETECTING DRIFT BETWEEN DATA USED TO TRAIN A MACHINE LEARNING MODEL AND DATA USED TO EXECUTE THE MACHINE LEARNING MODEL

In some embodiments, a first plurality of representations are extracted from a first data set. A first set of distributions are generated based on the first plurality of representations. A machine learning model is trained based on the first plurality of representations and the first set of distribu...

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Hauptverfasser: HYDE, Reese M. E, DICKERSON, John P, CHEUNG, Rowan, HINES, Keegan E, RAO, Karthik
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creator HYDE, Reese M. E
DICKERSON, John P
CHEUNG, Rowan
HINES, Keegan E
RAO, Karthik
description In some embodiments, a first plurality of representations are extracted from a first data set. A first set of distributions are generated based on the first plurality of representations. A machine learning model is trained based on the first plurality of representations and the first set of distributions. A second plurality of representations are extracted from a second data set different from the first data set. The machine learning model is executed based on the second plurality of representations to produce a second set of distributions. An anomaly score is determined for each datum from the second data set to produce a set of anomaly scores. The set of anomaly scores are determined based on the first set of distributions and the second set of distributions. A notification is generated when at least one anomaly score from the set of anomaly scores is larger than a predetermined threshold.
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subjects CALCULATING
COMPUTER SYSTEMS BASED ON SPECIFIC COMPUTATIONAL MODELS
COMPUTING
COUNTING
HANDLING RECORD CARRIERS
PHYSICS
PRESENTATION OF DATA
RECOGNITION OF DATA
RECORD CARRIERS
title SYSTEMS AND METHODS FOR DETECTING DRIFT BETWEEN DATA USED TO TRAIN A MACHINE LEARNING MODEL AND DATA USED TO EXECUTE THE MACHINE LEARNING MODEL
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