In this article we discuss the technique of creating a new, much better predictive model from existing predictive models by using parallel data. There is given theoretical proof of its universality by means of simple provision of the set theory. Includes inaccuracies definition in appropriate dimensional space for multidimensional projections. There is given an example of creating better predictive algorithms from existing predicative models by using the parallel data during the forecasting the exchange rate.

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