If we accept Savage's set of axioms, then all uncertainties must be treated like ordinary probability. Savage espoused subjective probability, allowing, for example, the probability of Donald Trump's re-election. But Savage's probability also covers the objective version, such as the probability of heads in a fair toss of a coin. In other words, there is no distinction between objective and subjective probability. Savage's system has great theoretical implications; for example, prior probabilities can be elicited from subjective preferences, and then get updated by objective evidence, a learning step that forms the basis of Bayesian computations. Non-Bayesians have generally refused to accept the subjective aspect of probability or to allow priors in formal statistical modelling. As demanded, for example, by the late Dennis Lindley, since Bayesian probability is axiomatic, it is the non-Bayesians' duty to point out which axioms are not acceptable to them. This is not a simple request, since the Bayesian axioms are not commonly covered in our professional training, even in the Bayesian statistics courses. So our aim is to provide a readable exposition the Bayesian axioms from a close rereading Savage's classic book.
翻译:如果我们接受萨维奇的共性, 那么所有的不确定因素都必须像普通概率一样对待。 萨维奇支持主观概率, 允许唐纳德· 特朗普连任的概率。 但萨维奇的概率也包含客观版本, 比如在一枚硬币的公平赌注中头部的概率。 换句话说, 客观概率和主观概率之间没有区别。 萨维奇的体系具有巨大的理论意义; 比如, 先前的概率可以从主观偏好中引出, 然后通过客观证据来更新。 萨维奇支持主观概率, 这是构成贝耶斯计算基础的学习步骤。 非拜耶斯人通常不接受概率的主观方面, 或者在正式统计模型中允许先前的概率。 例如, 已故的丹尼斯· 林德利( Dennis Lindley) 要求, 因为贝耶斯的概率是非巴耶斯人的职责是指出哪些是他们不能接受的轴心。 这不是一个简单的要求, 因为巴伊西亚的轴不是我们专业训练中通常包括的学习步骤, 甚至在巴伊萨西亚的经典课程中, 所以我们的目标是从一个可读的前书。