Patent · US Active

Metric forecasting employing a similarity determination in a digital medium environment

US11640617B2 · kind B2 · utility

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2References
20Claims
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Key dates

Filing dateMar 21, 2017
Grant dateMay 2, 2023
Priority date
Expiry dateDec 14, 2039

Classification

  • Technology area (CPC G)Physics
  • CPC primaryG06Q30/0205
  • WIPO fieldComputer technology
  • WIPO sectorElectrical engineering

Abstract

Metric forecasting techniques and systems in a digital medium environment are described that leverage similarity of elements, one to another, in order to generate a forecast value for a metric for a particular element. In one example, training data is received that describes a time series of values of the metric for a plurality of elements. The model is trained to generate the forecast value of the metric, the training using machine learning of a neural network based on the training data. The training includes generating dimensional-transformation data configured to transform the training data into a simplified representation to determine similarity of the plurality of elements, one to another, with respect to the metric over the time series. The training also includes generating model parameters of the neural network based on the simplified representation to generate the forecast value of the metric.

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