Method for training a system to specifically react on a...

Data processing: artificial intelligence – Knowledge processing system

Reexamination Certificate

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Details

C706S014000, C706S015000, C706S046000, C706S062000, C707S912000, C707S944000, C707S952000

Reexamination Certificate

active

07937349

ABSTRACT:
A method for training a system to specifically react on a specific input. The method can include defining a set of binary data structures, each representing a real-world component, item, or virtual object; storing each data structure as a binary pattern; creating uniquely identifiable copies of the data structures to represent individual instances of the components, items, or virtual objects; creating a virtual state space of the components, items, or virtual objects by grouping them as relevant for a specific situation; receiving an input to change a status or an attribute value of at least one of the components, items, or virtual objects; storing the received changes in a new version of the applicable data structure instance; analyzing similarities of the stored binary patterns related to a particular action performed; and if a matched binary pattern is identified, proposing at least one possible action related to the matched binary pattern.

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