The Minimum Description Length principle for online sequence estimation/prediction in a proper learning setup is studied. If the underlying model class is discrete, then the total expected square loss is a particularly interesting performance measure: (a) this quantity is finitely bounded, implying convergence with probability one, and (b) it additionally specifies the convergence speed. For MDL, in general one can only have loss bounds which are finite but exponentially larger than those for Bayes mixtures. We show that this is even the case if the model class contains only Bernoulli distributions. We derive a new upper bound on the prediction error for countable Bernoulli classes. This implies a small bound (comparable to the one for Baye...
We bound the future loss when predicting any (computably) stochastic sequence online. Solomonoff fin...
Various optimality properties of universal sequence predictors based on Bayes-mixtures in general, a...
AbstractThis paper studies sequence prediction based on the monotone Kolmogorov complexity Km=-logm,...
We consider the Minimum Description Length principle for online sequence prediction. If the underlyi...
The Minimum Description Length principle for online sequence estimation/prediction in a proper learn...
The Minimum Description Length principle for online sequence estimateion/prediction in a proper lear...
We consider the Minimum Description Length principle for online sequence prediction. If the underlyi...
Minimum Description Length (MDL) is an important principle for induction and prediction, with stron...
We study the properties of the Minimum Description Length principle for sequence prediction, conside...
Minimum description length (MDL) is an important principle for induction and prediction, with strong...
We study the properties of the Minimum Description Length principle for sequence prediction, conside...
We study the properties of the MDL (or maximum penalized complexity) estimator fo...
The Minimum Description Length (MDL) principle selects the model that has the shortest code for data...
This paper studies sequence prediction based on the monotone Kolmogorov complexity Km = − log m, i.e...
This paper studies sequence prediction based on the monotone Kolmogorov complexity Km = − logm, i.e....
We bound the future loss when predicting any (computably) stochastic sequence online. Solomonoff fin...
Various optimality properties of universal sequence predictors based on Bayes-mixtures in general, a...
AbstractThis paper studies sequence prediction based on the monotone Kolmogorov complexity Km=-logm,...
We consider the Minimum Description Length principle for online sequence prediction. If the underlyi...
The Minimum Description Length principle for online sequence estimation/prediction in a proper learn...
The Minimum Description Length principle for online sequence estimateion/prediction in a proper lear...
We consider the Minimum Description Length principle for online sequence prediction. If the underlyi...
Minimum Description Length (MDL) is an important principle for induction and prediction, with stron...
We study the properties of the Minimum Description Length principle for sequence prediction, conside...
Minimum description length (MDL) is an important principle for induction and prediction, with strong...
We study the properties of the Minimum Description Length principle for sequence prediction, conside...
We study the properties of the MDL (or maximum penalized complexity) estimator fo...
The Minimum Description Length (MDL) principle selects the model that has the shortest code for data...
This paper studies sequence prediction based on the monotone Kolmogorov complexity Km = − log m, i.e...
This paper studies sequence prediction based on the monotone Kolmogorov complexity Km = − logm, i.e....
We bound the future loss when predicting any (computably) stochastic sequence online. Solomonoff fin...
Various optimality properties of universal sequence predictors based on Bayes-mixtures in general, a...
AbstractThis paper studies sequence prediction based on the monotone Kolmogorov complexity Km=-logm,...