International Business Machines Corporation
Detecting data anomalies

Last updated:

Abstract:

Embodiments for detecting data anomalies by a processor. A machine learning model may be trained according to collected scores and anomaly labels of a plurality of anomaly detection operations applied to one or more data sets such that the collected scores and labels identify a degree of accuracy of estimating anomalies for each of the plurality of anomaly detection operations. An anomaly may be detected in an unstructured data set by applying the trained machine learning model on an unstructured data set.

Status:
Grant
Type:

Utility

Filling date:

28 Feb 2017

Issue date:

13 Jul 2021