SUPERVISED MACHINE LEARNING-BASED MODELING OF SENSITIVITIES TO POTENTIAL DISRUPTIONS

Computer-implemented systems, methods and products for modeling sensitivities to potential disruptions by observing performances of entities in a first sub-population and a second sub-population using a machine learning model comprising a set of predictors and a binary indicator variable associated...

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Bibliographische Detailangaben
Hauptverfasser: Fahner, Gerald, Vancho, Brad
Format: Patent
Sprache:eng
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Beschreibung
Zusammenfassung:Computer-implemented systems, methods and products for modeling sensitivities to potential disruptions by observing performances of entities in a first sub-population and a second sub-population using a machine learning model comprising a set of predictors and a binary indicator variable associated with a first entity subjected to a first event associated with the first sub-population, the machine learning model trained to predict an expected performance for the first entity based on at least one of a known attribute associated with the first entity in relation to the first event and a value of the binary indicator variable associated with the first event.