AbstractThe usual theory of prediction with expert advice does not differentiate between good and bad “experts”: its typical results only assert that it is possible to efficiently merge not too extensive pools of experts, no matter how good or how bad they are. On the other hand, it is natural to expect that good experts’ predictions will in some way agree with the actual outcomes (e.g., they will be accurate on the average). In this paper we show that, in the case of the Brier prediction game (also known as the square-loss game), the predictions of a good (in some weak and natural sense) expert must satisfy the law of large numbers (both strong and weak) and the law of the iterated logarithm; we also show that two good experts’ predictions...
Can we forecast the probability of an arbitrary sequence of events happening so that the stated prob...
In this paper, we consider the problem of online prediction using expert advice. Under different ass...
We apply the method of defensive forecasting, based on the use of game-theoretic supermartingales, t...
AbstractThe usual theory of prediction with expert advice does not differentiate between good and ba...
AbstractWe consider the following problem. At each point of discrete time the learner must make a pr...
We consider the following problem. At each point of discrete time the learner must make a prediction...
AbstractThe paper applies the method of defensive forecasting, based on the use of game-theoretic su...
The paper applies the method of defensive forecasting, based on the use of game-theoretic supermarti...
We apply the method of defensive forecasting, based on the use of game-theoretic supermartingales, t...
This paper compares two methods of prediction with expert advice, the Aggregating Algorithm and the ...
We give an overview of two approaches to probabiliity theory where lower and upper probabilities, ra...
AbstractWe consider the problem of learning to predict as well as the best in a group of experts mak...
We give an overview of two approaches to probabiliity theory where lower and upper probabilities, ra...
This thesis presents some geometric insights into three different types of two-player predictio...
AbstractIn this paper, we consider the problem of online prediction using expert advice. Under diffe...
Can we forecast the probability of an arbitrary sequence of events happening so that the stated prob...
In this paper, we consider the problem of online prediction using expert advice. Under different ass...
We apply the method of defensive forecasting, based on the use of game-theoretic supermartingales, t...
AbstractThe usual theory of prediction with expert advice does not differentiate between good and ba...
AbstractWe consider the following problem. At each point of discrete time the learner must make a pr...
We consider the following problem. At each point of discrete time the learner must make a prediction...
AbstractThe paper applies the method of defensive forecasting, based on the use of game-theoretic su...
The paper applies the method of defensive forecasting, based on the use of game-theoretic supermarti...
We apply the method of defensive forecasting, based on the use of game-theoretic supermartingales, t...
This paper compares two methods of prediction with expert advice, the Aggregating Algorithm and the ...
We give an overview of two approaches to probabiliity theory where lower and upper probabilities, ra...
AbstractWe consider the problem of learning to predict as well as the best in a group of experts mak...
We give an overview of two approaches to probabiliity theory where lower and upper probabilities, ra...
This thesis presents some geometric insights into three different types of two-player predictio...
AbstractIn this paper, we consider the problem of online prediction using expert advice. Under diffe...
Can we forecast the probability of an arbitrary sequence of events happening so that the stated prob...
In this paper, we consider the problem of online prediction using expert advice. Under different ass...
We apply the method of defensive forecasting, based on the use of game-theoretic supermartingales, t...