Strongly consistent nonparametric forecasting and regression for stationary ergodic sequences
Probability
2008-06-19 v1 Information Theory
math.IT
Abstract
Let be a stationary ergodic time series with values in the product space This study offers what is believed to be the first strongly consistent (with respect to pointwise, least-squares, and uniform distance) algorithm for inferring under the presumption that is uniformly Lipschitz continuous. Auto-regression, or forecasting, is an important special case, and as such our work extends the literature of nonparametric, nonlinear forecasting by circumventing customary mixing assumptions. The work is motivated by a time series model in stochastic finance and by perspectives of its contribution to the issues of universal time series estimation.
Cite
@article{arxiv.0712.2592,
title = {Strongly consistent nonparametric forecasting and regression for stationary ergodic sequences},
author = {S. Yakowitz and L. Gyorfi and J. Kieffer and G. Morvai},
journal= {arXiv preprint arXiv:0712.2592},
year = {2008}
}