We prove the strong consistency of estimators of the conditional distribution function and conditional expectation of a future observation of a discrete time stochastic process given a fixed number of past observations. The results apply to conditionally stationary processes (a class of processes including Markov and stationary processes) satisfying a strong mixing condition, and they extend and bring together the work of several authors in the area of nonparametric estimation. One of our goals is to provide further justification for the growing practical application of estimators in non-stationary time series and in other `non i.i.d.'~settings. Some arguments as to why such estimators should work very generally in practice, often in a near...
Motivated by the problem of setting prediction intervals in time series analysis, we suggest two new...
AbstractLet {Xj: j ⩾ 1} be a real-valued stationary process. Recursive kernel estimators of the join...
International audienceA sequence $x_1,\dots,x_n,\dots$ of discrete-valued observations is generated ...
One of the basic estimation problems for continuous time stationary processes Xt, is that of estimat...
AbstractLet {Xj} ∞j=−∞ be a real-valued stationary process. Recursive kernel estimators of the joint...
AbstractConsider the stochastic processes X1, X2,… and Λ1, Λ2,… where the X process can be thought o...
AbstractConsider a continuous time Markov chain with stationary transition probabilities. A function...
We address the problem of sequence prediction for nonstationary stochastic processes. In particular,...
AbstractSuppose we are given two probability measures on the set of one-way infinite finite-alphabet...
AbstractThis paper is concerned with consistent nearest neighbor time series estimation for data gen...
Bailey showed that the general pointwise forecasting for stationary and ergodic time series has a ne...
Motivated by the problem of setting prediction intervals in time series analysis, we suggest two new...
Deep learning models have shown impressive results in a variety of time series forecasting tasks, wh...
International audienceThe problem is sequence prediction in the following setting. A sequence $x_1,\...
While sophisticated neural networks and graphical models have been developed for predicting conditio...
Motivated by the problem of setting prediction intervals in time series analysis, we suggest two new...
AbstractLet {Xj: j ⩾ 1} be a real-valued stationary process. Recursive kernel estimators of the join...
International audienceA sequence $x_1,\dots,x_n,\dots$ of discrete-valued observations is generated ...
One of the basic estimation problems for continuous time stationary processes Xt, is that of estimat...
AbstractLet {Xj} ∞j=−∞ be a real-valued stationary process. Recursive kernel estimators of the joint...
AbstractConsider the stochastic processes X1, X2,… and Λ1, Λ2,… where the X process can be thought o...
AbstractConsider a continuous time Markov chain with stationary transition probabilities. A function...
We address the problem of sequence prediction for nonstationary stochastic processes. In particular,...
AbstractSuppose we are given two probability measures on the set of one-way infinite finite-alphabet...
AbstractThis paper is concerned with consistent nearest neighbor time series estimation for data gen...
Bailey showed that the general pointwise forecasting for stationary and ergodic time series has a ne...
Motivated by the problem of setting prediction intervals in time series analysis, we suggest two new...
Deep learning models have shown impressive results in a variety of time series forecasting tasks, wh...
International audienceThe problem is sequence prediction in the following setting. A sequence $x_1,\...
While sophisticated neural networks and graphical models have been developed for predicting conditio...
Motivated by the problem of setting prediction intervals in time series analysis, we suggest two new...
AbstractLet {Xj: j ⩾ 1} be a real-valued stationary process. Recursive kernel estimators of the join...
International audienceA sequence $x_1,\dots,x_n,\dots$ of discrete-valued observations is generated ...