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Asymptotic Maximum Entropy Principle for Utility Elicitation under High uncertainty and Partial Information

机译:高不确定性和部分信息下的渐近最大熵原理

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Decision making has proposed multiple methods to help the decision maker in his analysis, by suggesting ways of formalization of the preferences as well as the assessment of the uncertainties. Although these techniques are established and proven to be mathematically sound, experience has shown that in certain situations we tend to avoid the formal approach by acting intuitively. Especially, when the decision involves a large number of attributes and outcomes, and where we need to use pragmatic and heuristic simplifications such as considering only the most important attributes and omitting the others. In this paper, we provide a model for decision making in situations subject to a large predictive uncertainty with a small learning sample. The high predictive uncertainty is concretized by a countably infinite number of prospects, making the preferences assessment more difficult. Our main result is an extension of the Maximum Entropy utility (MEU) principle into an asymptotic maximum entropy utility principle for preferences elicitation. This will allow us to overcome the limits of the existing MEU method to the extend that we focus on utility assessment when the set of the available discrete prospects is countably infinite. Furthermore, our proposed model can be used to analyze situations of high-cognitive load as well as to understand how humans handle these problems under Ceteris Paribus assumption.
机译:决策制定提出了多种方法来帮助决策者在分析中,通过建议偏好的形式化以及对不确定因素的评估。尽管建立了这些技术并被证明是在数学上的声音,但经验表明,在某些情况下,我们倾向于通过直观行动来避免正式的方法。特别是,当决定涉及大量的属性和结果时,我们需要使用务实和启发式简化,例如仅考虑最重要的属性并省略其他属性。在本文中,我们提供了一个模型,用于在与小型学习样本的大预测不确定性受到大的预测性不确定性的情况下的决策模型。高预测性不确定性由可选的无限数量的前景混凝土,使得偏好评估更加困难。我们的主要结果是将最大熵效用(MEU)原则转换为偏好偏出的渐近最大熵实用原理。这将使我们能够克服现有MEU方法的限制,以便在可用的离散前景集合是无穷无尽的情况下,我们专注于公用事业评估的扩展。此外,我们的拟议模型可用于分析高认知负荷的情况,并了解人类如何处理基特斯的Paribus假设下这些问题。

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