AbstractWe analyze a new algorithm for probability forecasting of binary observations on the basis of the available data, without making any assumptions about the way the observations are generated. The algorithm is shown to be well-calibrated and to have good resolution for long enough sequences of observations and for a suitable choice of its parameter, a kernel on the Cartesian product of the forecast space [0, 1] and the data space. Our main results are non-asymptotic: we establish explicit inequalities, shown to be tight, for the performance of the algorithm
The problem of prediction future event given an individual sequence of past events is considered. P...
AbstractCombining outcomes of coin-tossing and transducer algorithms it is possible to generate with...
We consider the problem of forecasting a sequence of outcomes from an unknown source. The quality of...
We analyze a new algorithm for probability forecasting of binary observations on the basis of the av...
AbstractWe analyze a new algorithm for probability forecasting of binary observations on the basis o...
Can we forecast the probability of an arbitrary sequence of events happening so that the stated prob...
In the problem of probability forecasting the learner’s goal is to output, given a training set and ...
AbstractIt has been recently shown that calibration with an error less than Δ>0 is almost surely gua...
Schervish (1985b) showed that every forecasting system is noncalibrated for uncountably many data se...
Over the past few years many proofs of the existence of calibration have been discovered. Each of th...
Building on the game theoretic framework for probability, we show that it is possible, using randomi...
We study the problem of making calibrated probabilistic forecasts for a binary sequence generated by...
AbstractThe Bayesian program in statistics starts from the assumption that an individual can always ...
AbstractWe consider forecasting systems which, when given an initial segment of a binary string, gue...
The problem of prediction future event given an individual sequence of past events is considered. P...
AbstractCombining outcomes of coin-tossing and transducer algorithms it is possible to generate with...
We consider the problem of forecasting a sequence of outcomes from an unknown source. The quality of...
We analyze a new algorithm for probability forecasting of binary observations on the basis of the av...
AbstractWe analyze a new algorithm for probability forecasting of binary observations on the basis o...
Can we forecast the probability of an arbitrary sequence of events happening so that the stated prob...
In the problem of probability forecasting the learner’s goal is to output, given a training set and ...
AbstractIt has been recently shown that calibration with an error less than Δ>0 is almost surely gua...
Schervish (1985b) showed that every forecasting system is noncalibrated for uncountably many data se...
Over the past few years many proofs of the existence of calibration have been discovered. Each of th...
Building on the game theoretic framework for probability, we show that it is possible, using randomi...
We study the problem of making calibrated probabilistic forecasts for a binary sequence generated by...
AbstractThe Bayesian program in statistics starts from the assumption that an individual can always ...
AbstractWe consider forecasting systems which, when given an initial segment of a binary string, gue...
The problem of prediction future event given an individual sequence of past events is considered. P...
AbstractCombining outcomes of coin-tossing and transducer algorithms it is possible to generate with...
We consider the problem of forecasting a sequence of outcomes from an unknown source. The quality of...