DocumentCode
1203512
Title
Asymptotics of discrete MDL for online prediction
Author
Poland, Jan ; Hutter, Marcus
Author_Institution
Graduate Sch. of Inf. Sci. & Technol., Hokkaido Univ., Sapporo, Japan
Volume
51
Issue
11
fYear
2005
Firstpage
3780
Lastpage
3795
Abstract
Minimum description length (MDL) is an important principle for induction and prediction, with strong relations to optimal Bayesian learning. This paper deals with learning processes which are independent and identically distributed (i.i.d.) by means of two-part MDL, where the underlying model class is countable. We consider the online learning framework, i.e., observations come in one by one, and the predictor is allowed to update its state of mind after each time step. We identify two ways of predicting by MDL for this setup, namely, a static and a dynamic one. (A third variant, hybrid MDL, will turn out inferior.) We will prove that under the only assumption that the data is generated by a distribution contained in the model class, the MDL predictions converge to the true values almost surely. This is accomplished by proving finite bounds on the quadratic, the Hellinger, and the Kullback-Leibler loss of the MDL learner, which are, however, exponentially worse than for Bayesian prediction. We demonstrate that these bounds are sharp, even for model classes containing only Bernoulli distributions. We show how these bounds imply regret bounds for arbitrary loss functions. Our results apply to a wide range of setups, namely, sequence prediction, pattern classification, regression, and universal induction in the sense of algorithmic information theory among others.
Keywords
Bayes methods; learning by example; pattern classification; prediction theory; regression analysis; sequences; Bernoulli distribution; algorithmic information theory; arbitrary loss function; discrete MDL asymptotic; iid; independent identically distribution; minimum description length; online prediction; optimal Bayesian learning; pattern classification; regression analysis; universal induction; Bayesian methods; Convergence; Hybrid power systems; Information science; Information theory; Materials science and technology; Pattern classification; Pattern recognition; Predictive models; Statistical learning; Algorithmic information theory; classification; consistency; discrete model class; loss bounds; minimum description length (MDL); regression; sequence prediction; stabilization; universal induction;
fLanguage
English
Journal_Title
Information Theory, IEEE Transactions on
Publisher
ieee
ISSN
0018-9448
Type
jour
DOI
10.1109/TIT.2005.856956
Filename
1522640
Link To Document