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MACHINE-LEARNING BASED ELECTRONIC ACTIVITY ACCURACY VERIFICATION AND DETECTION OF ANOMALOUS ATTRIBUTES AND METHODS THEREOF

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Abstract:

Systems and methods of the present disclosure enable a processor to automatically detect anomalous user-specified data by receiving an electronic activity verification associated with an electronic activity of a user account, including a value associated with an electronic activity, and a user-specified value indicative of an additional value specified by a user for the electronic activity. The processor generates a feature vector including the verified value and the user-specified value and utilizes an anomalous attribute classification model to ingest the feature vector to determine an anomaly classification based on learned model parameters. The processor generates a dispute graphical user interface (GUI) including an alert message and a dispute interface element, that upon a user interaction causes an electronic request to dispute the electronic activity verification to prevent an execution of the electronic activity. The processor cancels the electronic activity to prevent the execution of the electronic activity.

Status:
Application
Type:

Utility

Filling date:

31 Dec 2020

Issue date:

30 Jun 2022