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Evaluation, Kombination und Auswahl betriebswirtschaftlicher Prognoseverfahren

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Prognoserechnung

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Küsters, U. (2005). Evaluation, Kombination und Auswahl betriebswirtschaftlicher Prognoseverfahren. In: Mertens, P., Rässler, S. (eds) Prognoserechnung. Physica-Verlag HD. https://doi.org/10.1007/3-7908-1606-X_19

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