Modelling stochastic decision systems using dependent-chance programming

@inproceedings{Liu1997ModellingSD,
  title={Modelling stochastic decision systems using dependent-chance programming},
  author={Baoding Liu and Kakuzo Iwamura},
  year={1997}
}
This paper further discusses the techniques of dependent-chance programming, dependent-chance multiobjective programming and dependent-chance goal programming. Some illustrative examples are provided to show how to model complex stochastic decision systems by using dependent-chance programming and how to solve these models by employing a Monte Carlo simulation based genetic algorithm. 

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