Technical Report IDSIA - 13 - 05 Asymptotics of Discrete MDL for Online Prediction ∗ Jan Poland and Marcus

نویسنده

  • Marcus Hutter
چکیده

Minimum Description Length (MDL) is an important principle for induction and prediction, with strong relations to optimal Bayesian learning. This paper deals with learning non-i.i.d. processes 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 his 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.

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Asymptotics of Discrete MDL for Online Prediction ∗ Jan Poland and Marcus

Minimum Description Length (MDL) is an important principle for induction and prediction, with strong relations to optimal Bayesian learning. This paper deals with learning non-i.i.d. processes 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 his state o...

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Asymptotics of Discrete MDL for Online Prediction. erratum

Author(s) Poland, Jan; Hutter, Marcus Citation IEEE Transactions on Information Theory, 51(11): 3780-3795 Issue Date 2005-11 Doc URL http://hdl.handle.net/2115/8468 Right (c) 2005-2006 IEEE. Personal use of this material is permitted. However, permission to reprint/republish this material for advertising or promotional purposes or for creating new collective works for resale or redistribution t...

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MDL Convergence Speed for Bernoulli Sequences

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تاریخ انتشار 2005