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Towards an Algorithmic Statistics

机译:迈向算法统计

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摘要

While Kolmogorov complexity is the accepted absolute measure of information content of an individual finite object, a similarly absolute notion is needed for the relation between an individual data sample and an individual model summarizing the information in the data, for example, a finite set where the data sample typically came from. The statistical theory based on such relations between individual objects can be called algorithmic statistics, in contrast to ordinary statistical theory that deals with relations between probabilistic ensembles. We develop a new algorithmic theory of typical statistic, sufficient statistic, and minimal sufficient statistic.
机译:虽然Kolmogorov复杂性是个人有限对象的信息内容的可接受的绝对衡量,但是对于单独的数据样本与总结数据中信息的各个模型之间的关系,需要类似的绝对概念,例如,其中的有限集数据样本通常来自。与各个对象之间的这种关系的统计理论可以称为算法统计,与概率合并之间的关系的普通统计理论相反。我们开发了一种典型统计,充分统计和最小足够统计数据的新算法理论。

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