Automated method for building a model

Data processing: artificial intelligence – Neural network – Learning task

Reexamination Certificate

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C706S015000, C706S023000, C706S906000, C706S907000, C706S903000

Reexamination Certificate

active

06879971

ABSTRACT:
A method for determining an output value having a known relationship to an input value with a predicted value includes the step of first training a predictive model with at least one output for a given set of inputs that exist in a finite dataset. Data is then input to the predictive model that is within the set of given inputs. Thereafter, a prediction is made of an output from the predictive model that corresponds to the given input such that a predicted output value will be obtained which will have associated therewith the errors of the predictive model.

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