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The approach to identifying non-stationary states of complex objects

Keywords:

A.A. Elshin, A.V. Elshin


One of the features of modern management approaches is to improve the adequacy of the models. Wwith a special interest for modeling of present organizational and ergatic in behavior non-stationary models which occur non-stationary state. The article considers approaches to identifying such conditions. As a result of their analysis of a selected mathematical tools of Association rules is selected. It is shown that in a limited period, the cumulative effect on the system, informative of thewith respect to associations as decision rules, can be improved by the formation of rules within the specified period of exposure. It is experimentally proved that the proposed approach is effective with a small number of events that form antecedent, and small dimension of the alphabet of input actions.
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