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Directional Decomposition of Multiattribute Utility Functions

机译:多属性效用函数的方向分解

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Several schemes have been proposed for compactly representing multiattribute utility functions, yet none seems to achieve the level of success achieved by Bayesian and Markov models for probability distributions. In an attempt to bridge the gap, we propose a new representation for utility functions which follows its probabilistic analog to a greater extent. Starting from a simple definition of marginal utility by utilizing reference values, we define a notion of conditional utility which satisfies additive analogues of the chain rule and Bayes rule. We farther develop the analogy to probabilities by describing a directed graphical representation that relies on our concept of conditional independence. One advantage of this model is that it leads to a natural structured elicitation process, very similar to that of Bayesian networks.
机译:已经提出了几种方案来紧凑地表示多属性效用函数,但是似乎没有一种方案能达到贝叶斯和马尔可夫模型用于概率分布的成功水平。为了弥合差距,我们提出了一种效用函数的新表示形式,该函数在更大程度上遵循其概率模拟。从利用参考值对边际效用进行简单定义开始,我们定义了条件效用的概念,该条件满足链规则和贝叶斯规则的加法类似物。通过描述依赖于条件独立性概念的有向图形表示,我们进一步发展了概率的类比。这种模型的一个优点是,它导致了自然的结构化启发过程,与贝叶斯网络非常相似。

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