DocumentCode
1173347
Title
Kolmogorov´s structure functions and model selection
Author
Vereshchagin, Nikolai K. ; Vitányi, Paul M B
Author_Institution
Dept. of Math. Logic & Theor. of Algorithms, Moscow State Univ., Russia
Volume
50
Issue
12
fYear
2004
Firstpage
3265
Lastpage
3290
Abstract
In 1974, Kolmogorov proposed a nonprobabilistic approach to statistics and model selection. Let data be finite binary strings and models be finite sets of binary strings. Consider model classes consisting of models of given maximal (Kolmogorov) complexity. The "structure function" of the given data expresses the relation between the complexity level constraint on a model class and the least log-cardinality of a model in the class containing the data. We show that the structure function determines all stochastic properties of the data: for every constrained model class it determines the individual best fitting model in the class irrespective of whether the "true" model is in the model class considered or not. In this setting, this happens with certainty, rather than with high probability as is in the classical case. We precisely quantify the goodness-of-fit of an individual model with respect to individual data. We show that-within the obvious constraints-every graph is realized by the structure function of some data. We determine the (un)computability properties of the various functions contemplated and of the "algorithmic minimal sufficient statistic.".
Keywords
information theory; maximum likelihood estimation; probability; structure functions; Kolmogorovs structure function; best fitting model; binary strings; complexity level constraint; constrained maximum likelihood; least log-cardinality; minimum description length; model selection; nonprobabilistic approach; Computer science; Engineering profession; Logic; Mathematics; Predictive models; Region 8; Source coding; Statistics; Stochastic processes; Technological innovation; 65; Computability; Kolmogorov complexity; Kolmogorov structure function; MDL; ML; constrained best fit model sel- ection; constrained maximum likelihood; constrained minimum description length; function prediction; lossy compression; minimal sufficient statistic; nonprobabilistic statistics; sufficient statistic;
fLanguage
English
Journal_Title
Information Theory, IEEE Transactions on
Publisher
ieee
ISSN
0018-9448
Type
jour
DOI
10.1109/TIT.2004.838346
Filename
1362910
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