A Mining Driven Decision Support System for Joining the European Monetary Union

Ray R. Hashemi, Omid Ardakani, Azita Bahrami, Jeffrey Young, Rosina Campbell

Research output: Contribution to book or proceedingChapter

Abstract

The European Monetary Union (EMU) is a result of an economic integration of European Union member states into a unified economic system. The literature is divided on whether the EMU members benefit from this monetary unification. Considering costs and benefits, a fiscal authority may ask whether it is a good decision to join the EMU. We introduce and develop a decision support system to answer the proposed question using a historical dataset of twelve Macroeconomic Outcomes (MOs) obtained for 31 European countries and for 18 years (1999-2016). The system meets the three-prong goal of: (1) identifying highly relevant MOs for a given year, yi, using the data from years y1 to yi; (2) deriving decision of “join/not-join” the EMU along with its certainty factor using the relevant MOs for yi; and (3) examining the accuracy of the derived decision using the data from yi+1 to y18. The performance analysis of the system reveals that (a) the number of relevant MOs has declined nonlinearly over time, (b) the relevant MOs and decisions are significantly changed before and after the European debt crisis, and (c) the derived decisions by the system has 79% accuracy.

Original languageAmerican English
Title of host publicationEighth International Conference on Advances in Information Mining and Management (IMMM’18)
StatePublished - Jul 1 2018

Disciplines

  • Computer Sciences

Keywords

  • Mining
  • Driven decision
  • Support system
  • Joining
  • European Monetary Union
  • Mining features
  • Bayesian theorem

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