The Joint Variability of the System for Destructive Components Analysis in Ensemble Prediction Context
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چکیده
The article presents a new concept for the variability measure of a set of signals. It is used in the context of predictive models aggregation and it aims at identification of common hidden components into constructive and destructive ones. The validity of the concept is confirmed by the practical experiment with the energy load prediction from Polish market.
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تاریخ انتشار 2010