• DocumentCode
    771678
  • Title

    Meaningful Information

  • Author

    Vitanyi, P.M.

  • Author_Institution
    CWI, Amsterdam
  • Volume
    52
  • Issue
    10
  • fYear
    2006
  • Firstpage
    4617
  • Lastpage
    4626
  • Abstract
    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 total 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 sophistication-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
  • Keywords
    information theory; recursive functions; statistical distributions; Kolmogorov complexity; accidental information; algorithmic statistics; computable probability distribution; information accounting; mass function; maximum-minimum value; recursive function; Algorithm design and analysis; Distributed computing; Frequency estimation; Gravity; Length measurement; Measurement errors; Probability distribution; Redundancy; Statistical analysis; Statistical distributions; Computability; Kolmogorov complexity; Kolmogorov structure function; constrained best fit model selection; lossy compression; minimal sufficient statistic; nonprobabilistic statistics; sophistication; sufficient statistic;
  • fLanguage
    English
  • Journal_Title
    Information Theory, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    0018-9448
  • Type

    jour

  • DOI
    10.1109/TIT.2006.881729
  • Filename
    1705018