
In many practical situations, decisions are multi-objective by nature. In this paper, we propose a generic approach to deal with multi-objective scheduling problems (MOSPs). The aim is to determine the set of Pareto solutions that represent the interactions between the different objectives. Due to the complexity of MOSPs, an efficient approximation based on dynamic programming is developed. The approximation has a provable worst case performance guarantee. Even though the approximate Pareto set consists of fewer solutions, it represents a good coverage of the true set of Pareto solutions. We consider generic cost parameters that depend on the state of the system. Numerical results are presented for the time-dependent multi-objective knapsack problem, showing the value of the approximation in the special case when the state of the system is expressed in terms of time.
[INFO.INFO-RO]Computer Science [cs]/Operations Research [math.OC], 006, Multi-objective decisions, Dynamic programming, Approximation, [INFO.INFO-RO] Computer Science [cs]/Operations Research [math.OC], State-dependent costs
[INFO.INFO-RO]Computer Science [cs]/Operations Research [math.OC], 006, Multi-objective decisions, Dynamic programming, Approximation, [INFO.INFO-RO] Computer Science [cs]/Operations Research [math.OC], State-dependent costs
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