We study online learning under logarithmic loss with regular parametric models. Hedayati and Bartlett (2012b) showed that a Bayesian prediction strategy with Jeffreys prior and sequential normalized maximum likelihood (SNML) coincide and are optimal if and only if the latter is exchangeable, and if and only if the optimal strategy can be calculated without knowing the time horizon in advance. They put forward the question what families have exchangeable SNML strategies. This paper fully answers this open problem for one-dimensional exponential families. The exchangeability can happen only for three classes of natural exponential family distributions, namely the Gaussian, Gamma, and the Tweedie exponential family of order 3/2
Various optimality properties of universal sequence predictors based on Bayes-mixtures in general, a...
We investigate on-line prediction of individual sequences. Given a class of predictors, the goal is...
Various optimality properties of universal sequence predictors based on Bayes-mixtures in general, a...
We study online prediction of individual sequences under logarithmic loss with parametric experts. T...
We study online learning under logarithmic loss with regular parametric models. In this setting, eac...
The paper considers sequential prediction of individual sequences with log loss (online density esti...
This paper introduces a Laplace inversion technique for deriving unbiased predictors in exponential ...
We investigate on-line prediction of individual sequences. Given a class of predictors, the goal is ...
AbstractIn this paper, we consider the problem of on-line prediction in which at each time an unlabe...
We establish rates of convergences in time series forecasting using the statistical learning approac...
. We consider the game of sequentially assigning probabilities to future data based on past observat...
Abstract The normalized maximum likelihood distribution achieves minimax coding (log-loss) regret gi...
Various optimality properties of universal sequence predictors based on Bayes-mixtures in general, a...
summary:This article studies exponential families $\mathcal{E}$ on finite sets such that the informa...
We investigate online probability density estimation (or learning) of nonstationary (and memoryless)...
Various optimality properties of universal sequence predictors based on Bayes-mixtures in general, a...
We investigate on-line prediction of individual sequences. Given a class of predictors, the goal is...
Various optimality properties of universal sequence predictors based on Bayes-mixtures in general, a...
We study online prediction of individual sequences under logarithmic loss with parametric experts. T...
We study online learning under logarithmic loss with regular parametric models. In this setting, eac...
The paper considers sequential prediction of individual sequences with log loss (online density esti...
This paper introduces a Laplace inversion technique for deriving unbiased predictors in exponential ...
We investigate on-line prediction of individual sequences. Given a class of predictors, the goal is ...
AbstractIn this paper, we consider the problem of on-line prediction in which at each time an unlabe...
We establish rates of convergences in time series forecasting using the statistical learning approac...
. We consider the game of sequentially assigning probabilities to future data based on past observat...
Abstract The normalized maximum likelihood distribution achieves minimax coding (log-loss) regret gi...
Various optimality properties of universal sequence predictors based on Bayes-mixtures in general, a...
summary:This article studies exponential families $\mathcal{E}$ on finite sets such that the informa...
We investigate online probability density estimation (or learning) of nonstationary (and memoryless)...
Various optimality properties of universal sequence predictors based on Bayes-mixtures in general, a...
We investigate on-line prediction of individual sequences. Given a class of predictors, the goal is...
Various optimality properties of universal sequence predictors based on Bayes-mixtures in general, a...