A Decision Support System based on Rough sets for Enterprise Planning under uncertainty
Subject Areas :سید امیرهادی مینوفام 1 , Hassan Rashidi 2
1 - استادیار دانشگاه آزاد اسلامی واحد قزوین
2 - دانشگاه علامه طباطبائی
Keywords: Enterprise planning, Decision Support system, Uncertainty, Data reduction, Rough set theory,
Abstract :
Increasing rate of novice technology in global marketing arises some challenges in the economic enterprise planning. One of the appropriate approaches to resolve these challenges is using rough set theory along with decision making. In this paper, a decision support system with an algorithm based on rough set theory is provided. The proposed algorithm is implemented for a product line in one of the organizations under supervision of mining, industry and trade ministry. The variable effects on the enterpise aims are evaluated by analysing the strength and support criteria of rough sets. The rules are classeified as three different classes and 3 out of 12 have high reasonable averagewhie the last 3 have a relatively high violation probability. The other rules have heterogenious distribution and are not certain. The advantages of the proposed system are avoidance of enterprse capital wasting, prevention of errors due to data uncertainty, and high precision of decitions. The decision makers in the enterprise validated the increasment of simplicity and speeds of vital decision making by using the proposed system.
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