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Computable Randomness Is About More Than Probabilities

机译:可计算的随机性大于概率

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We introduce a notion of computable randomness for infinite sequences that generalises the classical version in two important ways. First, our definition of computable randomness is associated with imprecise probability models, in the sense that we consider lower expectations-or sets of probabilities-instead of classical 'precise' probabilities. Secondly, instead of binary sequences, we consider sequences whose elements take values in some finite sample space. Interestingly, we find that every sequence is computably random with respect to at least one lower expectation, and that lower expectations that are more informative have fewer computably random sequences. This leads to the intriguing question whether every sequence is computably random with respect to a unique most informative lower expectation. We study this question in some detail and provide a partial answer.
机译:我们引入了无限序列的可计算随机性的概念,该概念以两种重要方式概括了经典版本。首先,在我们考虑较低的期望值或几组概率而不是经典的“精确”概率的意义上,我们对可计算随机性的定义与不精确的概率模型相关。其次,考虑二进制元素不在某个有限样本空间中的值的序列,而不是二进制序列。有趣的是,我们发现,相对于至少一个较低的期望,每个序列都是可计算的随机性,而信息量更大的较低的期望则具有较少的可计算的随机序列。这就引出了一个有趣的问题,即相对于唯一的信息最丰富的较低期望,每个序列是否都是可计算的随机。我们将详细研究这个问题,并提供部分答案。

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