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A frequentist interpretation of probability for model-based inductive inference

机译:基于模型的归纳推断的概率论常识性解释

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The main objective of the paper is to propose a frequentist interpretation of probability in the context of model-based induction, anchored on the Strong Law of Large Numbers (SLLN) and justifiable on empirical grounds. It is argued that the prevailing views in philosophy of science concerning induction and the frequentist interpretation of probability are unduly influenced by enumerative induction, and the von Mises rendering, both of which are at odds with frequentist model-based induction that dominates current practice. The differences between the two perspectives are brought out with a view to defend the model-based frequentist interpretation of probability against certain well-known charges, including [i] the circularity of its definition, [ii] its inability to assign 'single event' probabilities, and [iii] its reliance on 'random samples'. It is argued that charges [i]-[ii] stem from misidentifying the frequentist 'long-run' with the von Mises collective. In contrast, the defining characteristic of the long-run metaphor associated with model-based induction is neither its temporal nor its physical dimension, but its repeatability (in principle); an attribute that renders it operational in practice. It is also argued that the notion of a statistical model can easily accommodate non-IID samples, rendering charge [iii] simply misinformed.
机译:本文的主要目的是在基于模型的归纳法基础上,以概率的频繁性解释为基础,以大数定律(SLLN)为基础,并根据经验证明是合理的。有人认为,关于归纳法和概率论的常识性解释的科学哲学主流观点受到枚举归纳法和冯·米塞斯翻译的不适当影响,这两者都与主导当前实践的基于常识性模型的归纳法不符。提出了两种观点之间的差异,以捍卫基于模型的概率论者对某些知名指控的概率解释,包括[i]定义的圆性,[ii]无法分配“单个事件”概率,以及[iii]对“随机样本”的依赖。有人认为,指控[i]-[ii]是由于错误地将常客主义者“长期”与冯·米塞斯(von Mises)集体误认为。相反,与基于模型的归纳相关的长期隐喻的定义特征既不是其时间上的也不是其物理尺寸,而是它的可重复性(原则上)。使它在实践中可操作的属性。也有人认为,统计模型的概念可以轻松地容纳非IID样本,从而使收费[iii]完全被误导。

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