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False confidence, non-additive beliefs, and valid statistical inference

机译:错误信心,非加性信念和有效的统计推断

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Statistics has made tremendous advances since the times of Fisher, Neyman, Jeffreys, and others, but the fundamental and practically relevant questions about probability and inference that puzzled our founding fathers remain unanswered. To bridge this gap, I propose to look beyond the two dominating schools of thought and ask the following three questions: what do scientists need out of statistics, do the existing frameworks meet these needs, and, if not, how to fill the void? To the first question, I contend that scientists seek to convert their data, posited statistical model, etc., into calibrated degrees of belief about quantities of interest. To the second question, I argue that any framework that returns additive beliefs, i.e., probabilities, necessarily suffers from false confidence certain false hypotheses tend to be assigned high probability and, therefore, risks systematic bias. This reveals the fundamental importance of non-additive beliefs in the context of statistical inference. But non-additivity alone is not enough so, to the third question, I offer a sufficient condition, called validity, for avoiding false confidence, and present a framework, based on random sets and belief functions, that provably meets this condition. Finally, I discuss characterizations of p-values and confidence intervals in terms of valid non-additive beliefs, which imply that users of these classical procedures are already following the proposed framework without knowing it. (C) 2019 Elsevier Inc. All rights reserved.
机译:自费舍尔,内曼,杰弗里斯等人时代以来,统计学已经取得了长足的进步,但是关于概率和推论的基本和实际相关的问题仍然困扰着我们的开国元勋。为了弥合这一差距,我建议超越两个主要的思想流派,并提出以下三个问题:科学家需要从统计中获得什么?现有框架是否可以满足这些需求?如果不能,则如何填补空白?对于第一个问题,我认为科学家试图将其数据,假设的统计模型等转换为对感兴趣数量的校准信念度。对于第二个问题,我认为,任何返回加性信念(即概率)的框架都必然遭受错误的置信度,某些错误的假设往往被赋予较高的概率,因此存在系统偏差的风险。这揭示了在统计推断的背景下非加性信念的根本重要性。但是仅靠非可加性是不够的,因此,对于第三个问题,我提供了一个称为有效性的充分条件,可以避免错误的置信度,并提出一个基于随机集和信念函数的框架,证明可以满足此条件。最后,我根据有效的非加性信念讨论了p值和置信区间的表征,这意味着这些经典过程的用户已经在不了解所提出的框架的情况下使用它。 (C)2019 Elsevier Inc.保留所有权利。

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