Litcius/Paper detail

Random Forests for Time Series

Benjamin Goehry, Hui Yan, Goude, Yannig, Pascal Massart, Jean‐Michel Poggi

2022HAL (Le Centre pour la Communication Scientifique Directe)21 citationsDOIOpen Access PDF

Abstract

Random forests are a powerful learning algorithm. However, when dealing with time series, the time-dependent structure is lost, assuming the observations are independent. We propose some variants of random forests for time series. The idea is to replace standard bootstrap with a dependent block bootstrap to subsample time series during tree construction. We present numerical experiments on electricity load forecasting. The first, at a disaggregated level and the second at a national level focusing on atypical periods. For both, we explore a heuristic for the choice of the block size. Additional experiments with generic time series data are also available.

Topics & Concepts

Series (stratigraphy)Random forestGeologyMathematicsGeographyComputer scienceArtificial intelligencePaleontologyTime Series Analysis and Forecasting