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Meaningful Information

机译:有意义的信息

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The information in an individual finite object (like a binary string) is commonly measured by its Kolmogorov complexity. One can divide that information into two parts: the information accounting for the useful regularity present in the object and the information accounting for the remaining accidental information. There can be several ways (model classes) in which the regularity is expressed. Kolmogorov has proposed the model class of finite sets, generalized later to computable probability mass functions. The resulting theory, known as Algorithmic Statistics, analyzes the algorithmic sufficient statistic when the statistic is restricted to the given model class. However, the most general way to proceed is perhaps to express the useful information as a recursive function. The resulting measure has been called the "sophistication" of the object. We develop the theory of recursive functions statistic, the maximum and minimum value, the existence of absolutely nonstochastic objects (that have maximal sophistion-all the information in them is meaningful and there is no residual randomness), determine its relation with the more restricted model classes of finite sets, and computable probability distributions, in particular with respect to the algorithmic (Kolmogorov) minimal sufficient statistic, the relation to the halting problem and further algorithmic properties.
机译:个人有限对象(如二进制字符串)中的信息通常通过其Kolmogorov复杂性来衡量。人们可以将该信息分为两部分:信息会计对象中存在的有用规律性以及剩余意外信息的信息会计。可以有几种方式(模型类),其中表示规律性。 Kolmogorov已经提出了模型类的有限集,以后推广到可计算概率质量功能。结果理论称为算法统计,分析统计量限于给定模型类时的算法足够统计。但是,最常见的方法可能会将有用的信息表达为递归函数。由此产生的措施被称为对象的“复杂性”。我们开发递归函数的统计理论,最大值和最小值,绝对非随机的对象的存在(即具有极大的sophistion,都在他们的信息是有意义的,没有残留的随机性),确定其与更受限制的模型关系的有限集合,以及可计算概率分布,特别是类相对于所述算法(洛夫)最小的充分统计量,关系到停机问题和进一步的算法性能。

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