Solving Bi-objective Model of Hotel Revenue Management Considering Customer Choice Behavior Using Meta-heuristic Algorithms
Subject Areas : StrategySurur Yaghobi Harzandi 1 , Amir Abbas Najafi 2
1 - Islamic Azad University
2 - K.N. Toosi University of Technology
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Abstract :
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