Decisions are often based on imprecise, uncertain or vague information. Likewise, the consequences of an action are often equally unpredictable, thus putting the decision maker into a twofold jeopardy. Assuming that the effects of an action can be modeled by a random variable, then the decision problem boils down to comparing different effects (random variables) by comparing their distribution functions. Although the full space of probability distributions cannot be ordered, a properly restricted subset of distributions can be totally ordered in a practically meaningful way. We call these loss-distributions, since they provide a substitute for the concept of loss-functions in decision theory. This article introduces the theory behind the necessary restrictions and the hereby constructible total ordering on random loss variables, which enables decisions under uncertainty of consequences. Using data obtained from simulations, we demonstrate the practical applicability of our approach.
翻译:同样,一项行动的后果往往同样不可预测,使决策者处于双重危险之中。假设一项行动的效果可以随机变数为模型,那么决定问题归结为通过比较其分布功能来比较不同效果(随机变数)。虽然不可能下令分配概率的全部空间,但可以以实际有意义的方式完全订购一个适当限制的分配子集。我们将这些损失分配称为损失分配,因为它们可以替代决定理论中的损失功能概念。这一条介绍了必要的限制背后的理论,以及由此可以构建的随机损失变数总顺序,从而能够在后果不确定的情况下作出决定。我们利用从模拟中获取的数据,展示了我们做法的实际适用性。