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Market Modeling, Forecasting and Risk Analysis with Historical Consistent Neural Networks

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Part of the book series: Operations Research Proceedings ((ORP))

Abstract

Business management requires precise forecasts in order to enhance the quality of planning throughout the value chain. Furthermore, the uncertainty in forecasting has to be taken into account.

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Correspondence to Hans-Georg Zimmermann .

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Zimmermann, HG., Grothmann, R., Tietz, C., von Jouanne-Diedrich, H. (2011). Market Modeling, Forecasting and Risk Analysis with Historical Consistent Neural Networks. In: Hu, B., Morasch, K., Pickl, S., Siegle, M. (eds) Operations Research Proceedings 2010. Operations Research Proceedings. Springer, Berlin, Heidelberg. https://doi.org/10.1007/978-3-642-20009-0_84

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