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首页> 外文期刊>Decision Analysis: a journal of the Institute for Operations Research and the Management Sciences >Decomposing the Cross Derivatives of a Multiattribute Utility Function into Risk Attitude and Value
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Decomposing the Cross Derivatives of a Multiattribute Utility Function into Risk Attitude and Value

机译:将多元效用函数的交叉衍生物分解成风险态度和价值

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The cross derivatives of a multiattribute utility function play an important role in the choice between multivariate lotteries and in multiattribute Taylor expansions of the utility function. This paper decomposes the cross derivatives into two components: the derivatives of a single-attribute utility function over value and the cross derivatives of the value function. This approach provides a simple method for reasoning about the signs of the cross derivatives of a multiattribute utility function using derivatives of a univariate utility function and the properties of the value function. To illustrate the approach, we relate the multivariate risk aversion concept, which involves the mixed partial derivative of the utility function, to the Arrow-Pratt risk aversion function. We show that for additive value functions, a decision maker is multivariate risk averse if and only if he is risk averse over value in the Arrow-Pratt sense. For other value functions, however, a decision maker can be risk averse or risk seeking over value and still exhibit multivariate risk aversion. The approach also derives the conditions on the value function that relate two important classes of utility functions: single attribute utility functions whose derivatives alternate in sign and multiattribute utility functions whose cross derivatives alternate in sign. These two classes are widely used in practice and form the basis of univariate and multivariate stochastic dominance. Several examples illustrate the approach.
机译:多元实用函数的交叉衍生物在多元彩票和实用功能的多元泰勒扩展中起作用重要作用。本文将交叉衍生物分解为两个组件:单个属性实用程序的衍生工具函数超过值和值函数的交叉衍生物。这种方法提供了一种简单的方法,可以使用单变量效用函数的衍生物和值函数的属性的衍生工具来推理多点实用程序函数的交叉导数的迹象。为了说明这种方法,我们涉及多变量风险厌恶概念,涉及实用程序函数的混合部分导数,箭头 - 普拉特风险厌恶函数。我们表明,对于添加价值函数,如果允许在箭头 - 普拉特的危险中厌恶价值,则决策者是多变量风险厌恶。然而,对于其他价值职能,决策者可能是风险厌恶或冒险的风险,并仍然表现出多变量风险厌恶。该方法还导出了值函数的条件,其中包含两个重要的实用程序功能:单个属性实用程序函数,其衍生物在符号和多级常用函数中替换,其交叉导数在符号中交替。这两种课程广泛用于实践中,并形成单变量和多变量随机优势的基础。有几个例子说明了这种方法。

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