Bailey showed that the general pointwise forecasting for stationary and ergodic time series has a negative solution. However, it is known that for Markov chains the problem can be solved. Morvai showed that there is a stopping time sequence {[lambda]n} such that P(X[lambda]n+1=1X0,...,X[lambda]n) can be estimated from samples (X0,...,X[lambda]n) such that the difference between the conditional probability and the estimate vanishes along these stoppping times for all stationary and ergodic binary time series. We will show it is not possible to estimate the above conditional probability along a stopping time sequence for all stationary and ergodic binary time series in a pointwise sense such that if the time series turns out to be a Markov ch...
Markov chains are a useful tool for solving practical problems. In many real-life situations, we do ...
We study the problem of ergodicity, stationarity and maximum likelihood estimation for multinomial l...
Observing a stationary time series, we propose a two-steps procedure for the prediction of its next ...
summary:Let $\{X_n\}$ be a stationary and ergodic time series taking values from a finite or countab...
summary:We give some estimation schemes for the conditional distribution and conditional expectation...
Let {(Xi, Yi)} be a stationary ergodic time series with (X, Y) values in the product space Rd ⊗ R. T...
We consider the selection of prediction models for Markovian time series. For this purpose, we study...
Suppose we are given two probability measures on the set of one-way infinite finite-alphabet sequenc...
We prove the strong consistency of estimators of the conditional distribution function and condition...
International audienceSuppose we are given two probability measures on the set of one-way infinite f...
AbstractConsider a continuous time Markov chain with stationary transition probabilities. A function...
summary:For a binary stationary time series define $\sigma_n$ to be the number of consecutive ones u...
We address the problem of sequence prediction for nonstationary stochastic processes. In particular,...
We present a simple randomized procedure for the prediction of a binary sequence. The algorithm uses...
One of the basic estimation problems for continuous time stationary processes Xt, is that of estimat...
Markov chains are a useful tool for solving practical problems. In many real-life situations, we do ...
We study the problem of ergodicity, stationarity and maximum likelihood estimation for multinomial l...
Observing a stationary time series, we propose a two-steps procedure for the prediction of its next ...
summary:Let $\{X_n\}$ be a stationary and ergodic time series taking values from a finite or countab...
summary:We give some estimation schemes for the conditional distribution and conditional expectation...
Let {(Xi, Yi)} be a stationary ergodic time series with (X, Y) values in the product space Rd ⊗ R. T...
We consider the selection of prediction models for Markovian time series. For this purpose, we study...
Suppose we are given two probability measures on the set of one-way infinite finite-alphabet sequenc...
We prove the strong consistency of estimators of the conditional distribution function and condition...
International audienceSuppose we are given two probability measures on the set of one-way infinite f...
AbstractConsider a continuous time Markov chain with stationary transition probabilities. A function...
summary:For a binary stationary time series define $\sigma_n$ to be the number of consecutive ones u...
We address the problem of sequence prediction for nonstationary stochastic processes. In particular,...
We present a simple randomized procedure for the prediction of a binary sequence. The algorithm uses...
One of the basic estimation problems for continuous time stationary processes Xt, is that of estimat...
Markov chains are a useful tool for solving practical problems. In many real-life situations, we do ...
We study the problem of ergodicity, stationarity and maximum likelihood estimation for multinomial l...
Observing a stationary time series, we propose a two-steps procedure for the prediction of its next ...