AbstractIn this paper we introduce a general method of establishing tight linear inequalities between different types of predictive complexity. Predictive complexity is a generalisation of Kolmogorov complexity and it bounds the ability of an algorithm to predict elements of a sequence. Our method relies upon probabilistic considerations and allows us to describe explicitly the sets of coefficients which correspond to true inequalities. We apply this method to two particular types of predictive complexity, namely, logarithmic complexity, which coincides with a variant of Kolmogorov complexity, and square-loss complexity, which is interesting for applications
Abstract—An event with low probability is unlikely to happen, but events with low probability happen...
AbstractIt is well known in the theory of Kolmogorov complexity that most strings cannot be compress...
Many machine learning algorithms aim at finding "simple" rules to explain training data. T...
AbstractIn this paper we introduce a general method of establishing tight linear inequalities betwee...
AbstractPredictive complexity is a generalization of Kolmogorov complexity. It corresponds to an “op...
AbstractThe notions of predictive complexity and of corresponding amount of information are consider...
Predictive complexity is a generalisation of Kolmogorov complexity motivated by an on-line predictio...
This paper studies sequence prediction based on the monotone Kolmogorov complexity Km = -log m, i.e....
AbstractThis paper studies sequence prediction based on the monotone Kolmogorov complexity Km=-logm,...
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....
This thesis is devoted to on-line learning. An on-line learning algorithm receives elements of a seq...
AbstractThe problem of predicting an arbitrary sequence x1x2x3 · · · is considered with xt + 1 being...
AbstractThe problem of predicting an arbitrary sequence x1x2x3 · · · is considered with xt + 1 being...
AbstractKolmogorov's very first paper on algorithmic information theory (Kolmogorov, Problemy pereda...
Abstract—An event with low probability is unlikely to happen, but events with low probability happen...
AbstractIt is well known in the theory of Kolmogorov complexity that most strings cannot be compress...
Many machine learning algorithms aim at finding "simple" rules to explain training data. T...
AbstractIn this paper we introduce a general method of establishing tight linear inequalities betwee...
AbstractPredictive complexity is a generalization of Kolmogorov complexity. It corresponds to an “op...
AbstractThe notions of predictive complexity and of corresponding amount of information are consider...
Predictive complexity is a generalisation of Kolmogorov complexity motivated by an on-line predictio...
This paper studies sequence prediction based on the monotone Kolmogorov complexity Km = -log m, i.e....
AbstractThis paper studies sequence prediction based on the monotone Kolmogorov complexity Km=-logm,...
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....
This thesis is devoted to on-line learning. An on-line learning algorithm receives elements of a seq...
AbstractThe problem of predicting an arbitrary sequence x1x2x3 · · · is considered with xt + 1 being...
AbstractThe problem of predicting an arbitrary sequence x1x2x3 · · · is considered with xt + 1 being...
AbstractKolmogorov's very first paper on algorithmic information theory (Kolmogorov, Problemy pereda...
Abstract—An event with low probability is unlikely to happen, but events with low probability happen...
AbstractIt is well known in the theory of Kolmogorov complexity that most strings cannot be compress...
Many machine learning algorithms aim at finding "simple" rules to explain training data. T...