arXiv:1803.05814 [cs.LG]AbstractReferencesReviewsResources
Theory and Algorithms for Forecasting Time Series
Vitaly Kuznetsov, Mehryar Mohri
Published 2018-03-15Version 1
We present data-dependent learning bounds for the general scenario of non-stationary non-mixing stochastic processes. Our learning guarantees are expressed in terms of a data-dependent measure of sequential complexity and a discrepancy measure that can be estimated from data under some mild assumptions. We also also provide novel analysis of stable time series forecasting algorithm using this new notion of discrepancy that we introduce. We use our learning bounds to devise new algorithms for non-stationary time series forecasting for which we report some preliminary experimental results.
Comments: An extended abstract has appeared in (Kuznetsov and Mohri, 2015)
Categories: cs.LG
Related articles: Most relevant | Search more
arXiv:2107.01705 [cs.LG] (Published 2021-07-04)
Randomized Neural Networks for Forecasting Time Series with Multiple Seasonality
arXiv:2010.01992 [cs.LG] (Published 2020-10-05)
Putting Theory to Work: From Learning Bounds to Meta-Learning Algorithms
arXiv:2203.09170 [cs.LG] (Published 2022-03-17)
Recurrent Neural Networks for Forecasting Time Series with Multiple Seasonality: A Comparative Study