MODEL RESELECTION FOR ACCOMMODATING UNSATISFACTORY TRAINING DATA

    公开(公告)号:US20200372298A1

    公开(公告)日:2020-11-26

    申请号:US16417245

    申请日:2019-05-20

    Applicant: ADOBE INC.

    Abstract: An anomaly analysis system generates models capable of more accurately identifying anomalies in data that contains unsatisfactory training data. The anomaly analysis system determines when data contains unsatisfactory training data. When an anomaly is detected in data using an initially selected model, and the data contains unsatisfactory training data, model reselection is performed. The reselected model analyzes the data. The reselected model is used to identify any anomalies in the data based on a data point from the data being outside of a confidence interval related to a predicted point by the reselected model corresponding to the data point.

    Model reselection for accommodating unsatisfactory training data

    公开(公告)号:US11620474B2

    公开(公告)日:2023-04-04

    申请号:US17480280

    申请日:2021-09-21

    Applicant: ADOBE INC.

    Abstract: An anomaly analysis system generates models capable of more accurately identifying anomalies in data that contains unsatisfactory training data. The anomaly analysis system determines when data contains unsatisfactory training data. When an anomaly is detected in data using an initially selected model, and the data contains unsatisfactory training data, model reselection is performed. The reselected model analyzes the data. The reselected model is used to identify any anomalies in the data based on a data point from the data being outside of a confidence interval related to a predicted point by the reselected model corresponding to the data point.

    MODEL RESELECTION FOR ACCOMMODATING UNSATISFACTORY TRAINING DATA

    公开(公告)号:US20220004813A1

    公开(公告)日:2022-01-06

    申请号:US17480280

    申请日:2021-09-21

    Applicant: ADOBE INC.

    Abstract: An anomaly analysis system generates models capable of more accurately identifying anomalies in data that contains unsatisfactory training data. The anomaly analysis system determines when data contains unsatisfactory training data. When an anomaly is detected in data using an initially selected model, and the data contains unsatisfactory training data, model reselection is performed. The reselected model analyzes the data. The reselected model is used to identify any anomalies in the data based on a data point from the data being outside of a confidence interval related to a predicted point by the reselected model corresponding to the data point.

    Model reselection for accommodating unsatisfactory training data

    公开(公告)号:US11132584B2

    公开(公告)日:2021-09-28

    申请号:US16417245

    申请日:2019-05-20

    Applicant: ADOBE INC.

    Abstract: An anomaly analysis system generates models capable of more accurately identifying anomalies in data that contains unsatisfactory training data. The anomaly analysis system determines when data contains unsatisfactory training data. When an anomaly is detected in data using an initially selected model, and the data contains unsatisfactory training data, model reselection is performed. The reselected model analyzes the data. The reselected model is used to identify any anomalies in the data based on a data point from the data being outside of a confidence interval related to a predicted point by the reselected model corresponding to the data point.

    Robust anomaly and change detection utilizing sparse decomposition

    公开(公告)号:US11095544B1

    公开(公告)日:2021-08-17

    申请号:US16904249

    申请日:2020-06-17

    Applicant: Adobe Inc.

    Abstract: The present disclosure describes systems, non-transitory computer-readable media, and methods for determining latent components of a metrics time series and identifying anomalous data within the metrics time series based on one or both of spikes/dips and level changes from the latent components satisfying significance thresholds. To identify such latent components, in some cases, the disclosed systems account for a range of value types by intelligently subjecting real values to a latent-component constraint for decomposing the time series and intelligently excluding non-real values from the latent-component constraint. The disclosed systems can further identify significant anomalous data values from latent components of the metrics time series by jointly determining whether one or both of a subseries of a spike-component series and a level change from a level-component series satisfy significance thresholds.

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