ITERATIVE SUPERVISED IDENTIFICATION OF NON-DOMINANT CLUSTERS

The invention relates to iterative supervised identification of non-dominant clusters. A method is provided. The method comprises: determining a binary classification value for each of a plurality ofdata instances based on a first threshold value assigned to each of the plurality of data instances;...

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Bibliographische Detailangaben
Hauptverfasser: BAIDYA BIKRAM, KAGALWALLA ABDE ALI HUNAID, SASTRY KUMARA, SINGH VIVEK K, GU ALLAN
Format: Patent
Sprache:chi ; eng
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Zusammenfassung:The invention relates to iterative supervised identification of non-dominant clusters. A method is provided. The method comprises: determining a binary classification value for each of a plurality ofdata instances based on a first threshold value assigned to each of the plurality of data instances; applying at least one clustering model to a first subset of the plurality of data instances to identify one or more dominant clusters of data instances; determining a second threshold value to assign to a second plurality of data instances that are included within the one or more dominant clustersof data instances; and redetermining a binary classification value for each of the plurality of data instances based on the second threshold value assigned to the second plurality of data instances and the first threshold value, wherein the first threshold value is assigned to at least a portion of data instances of the plurality of data instances that are not included in the second plurality of data instances. 本申请涉及非主导集群的