A multi-criteria decision-making (MCDM) model in the security forces operations based on rough sets

  • Zoran Karavidić University of Defence in Belgrade, Military academy, Department of Management, Belgrade, Serbia
  • Damir Projović University of Defence in Belgrade, Military academy, Department of Management, Belgrade, Serbia
Keywords: Multi-criteria Decision-making, Rough Sets, Course of Action, ROSETTA, ROSE2

Abstract

The paper points to a multi-criteria decision-making model based on the rough set theory application. The model demonstrates exceptional importance of the software application of the rough sets to decision-making in the security forces operations. Applying the rough sets represents a useful tool when the data, needed for the decision-making process, include vagueness and uncertainty. By applying the model based on the applicative use of the rough sets, specific decision-making rules are formulated. These rules guide the decision-makers through the complete process of planning the security operations

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Published
2018-03-15
How to Cite
Karavidić, Z., & Projović, D. (2018). A multi-criteria decision-making (MCDM) model in the security forces operations based on rough sets. Decision Making: Applications in Management and Engineering, 1(1), 97-120. Retrieved from http://www.dmame.org/index.php/dmame/article/view/10