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Entropy Methods For Univariate Distributions in Decision Analysis

机译:决策分析中单变量分布的熵方法

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One of the most important steps in decision analysis practice is the elicitation of the decision-maker's belief about an uncertainty of interest in the form of a representative probability distribution. However, the probability elicitation process is a task that involves many cognitive and motivational biases. Alternatively, the decision-maker may provide other information about the distribution of interest, such as its moments, and the maximum entropy method can be used to obtain a full distribution subject to the given moment constraints. In practice however, decision makers cannot readily provide moments for the distribution, and are much more comfortable providing information about the fractiles of the distribution of interest or bounds on its cumulative probabilities. In this paper we present a graphical method to determine the maximum entropy distribution between upper and lower probability bounds and provide an interpretation for the shape of the maximum entropy distribution subject to fractile constraints, (FMED). We also discuss the problems with the FMED in that it is discontinuous and flat over each fractile interval. We present a heuristic approximation to a distribution if in addition to its fractiles, we also know it is continuous and work through full examples to illustrate the approach.
机译:决策分析实践中最重要的步骤之一就是以代表性概率分布的形式激发决策者对利益不确定性的信念。但是,概率启发过程是一项涉及许多认知和动机偏见的任务。备选地,决策者可以提供有关兴趣分布的其他信息,例如其矩,并且最大熵方法可以用于在给定矩约束的情况下获得完整的分布。然而,在实践中,决策者不能轻易提供分配的时机,而更愿意提供有关利益分配的分形或累积概率界限的信息。在本文中,我们提出了一种图形方法来确定上下概率边界之间的最大熵分布,并为受分形约束(FMED)约束的最大熵分布的形状提供了一种解释。我们还讨论了FMED的问题,因为它在每个分数间隔内都是不连续且平坦的。如果除分形之外,我们还知道它是连续的,则可以给出启发式近似,并通过完整的例子来说明该方法。

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