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Decision-Principles to Justify Carnap's Updating Method and to Suggest Corrections of Probability Judgments

机译:决策原则以证明Carnap的更新方法并建议概率判断的更正

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This paper uses decision-theoretic principles to obtain new insights into the assessment and updating of probabilities. First, a new foundation of Bayesianism is given. It does not require infinite atomless uncertainties as did Savage's classical result, and can therefore be applied to any finite Bayesian network. It neither requires linear utility as did de Finetti's classical result, and therefore allows for the empirically and normatively desirable risk aversion. Finally, by identifying and fixing utility in an elementary manner, our result can readily be applied to identify methods of probability updating. Thus, a decision-theoretic foundation is given to the computationally efficient method of inductive reasoning developed by Rudolf Carnap. Finally, recent empirical findings on probability assessments are discussed. It leads to suggestions for correcting biases in probability assessments, and for an alternative to the Dempster-Shafer belief functions that avoids the reduction to degeneracy after multiple updatings.
机译:本文使用决策理论原理来获得对概率评估和更新的新见解。首先,给出了贝叶斯主义的新基础。它不需要像Savage的经典结果那样无限的无原子不确定性,因此可以应用于任何有限的贝叶斯网络。它既不需要像Finetti的经典结果那样要求线性效用,因此也可以在经验上和规范上实现期望的风险规避。最后,通过以基本方式识别和修复效用,我们的结果可以轻松地应用于识别概率更新方法。因此,为鲁道夫·卡纳普(Rudolf Carnap)开发的计算有效的归纳推理方法提供了决策理论基础。最后,讨论了关于概率评估的最新经验发现。它为纠正概率评估中的偏差提供了建议,并为Dempster-Shafer信念函数提供了一种替代方案,该函数避免了多次更新后退化的减少。

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