Bayesian and Graph Theory Approaches To Develop Strategic Early Warning Systems for the Milk Market

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Date

2015

Authors

Gürpınar, Furkan
Bisson, Christophe
Diner, Öznur Yaşar

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Publisher

Springer-Verlag Berlin

Open Access Color

Green Open Access

Yes

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Abstract

This paper presents frameworks for developing a Strategic Early Warning System allowing the estimatation of the future state of the milk market. Thus this research is in line with the recent call from the EU commission for tools which help to better address such a highly volatile market. We applied different multivariate time series regression and Bayesian networks on a pre-determined map of relations between macro economic indicators. The evaluation of our findings with root mean square error (RMSE) performance score enhances the robustness of the prediction model constructed. Finally we construct a graph to represent the major factors that effect the milk industry and their relationships. We use graph theoretical analysis to give several network measures for this social network
such as centrality and density.

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Keywords

Strategic Early Warning System, Bayesian networks, Graph theory, Forecasting, Milk, Graph theory, Bayesian networks, Milk, Strategic Early Warning System, Forecasting

Turkish CoHE Thesis Center URL

Fields of Science

0502 economics and business, 05 social sciences

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Volume

353

Issue

Start Page

533

End Page

542
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235

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