Improving performance of spatio-temporal machine learning models using forward feature selection and target-oriented validation

Meyer, H; Reudenbach, C; Hengl, T; Katurji, M; Nauss, T

Research article (journal) | Peer reviewed

Abstract

Importance of target-oriented validation strategies for spatio-temporal prediction models is illustrated using two case studies: (1) modelling of air temperature (Tair) in Antarctica, and (2) modelling of volumetric water content (VW) for the R.J. Cook Agronomy Farm, USA. Performance of a random k-fold cross-validation (CV) was compared to three target-oriented strategies: Leave-Location-Out (LLO), Leave-Time-Out (LTO), and Leave-Location-and-Time-Out (LLTO) CV. Results indicate that considerable differences between random k-fold (R2=0.9 for Tair and 0.92 for VW) and target-oriented CV (LLO R2=0.24 for Tair and 0.49 for VW) exist, highlighting the need for target-oriented validation to avoid an overoptimistic view on models. Differences between random k-fold and target-oriented CV indicate spatial over-fitting caused by misleading variables. To decrease over-fitting, a forward feature selection in conjunction with target-oriented CV is proposed. It decreased over-fitting and simultaneously improved target-oriented performances (LLO CV R2=0.47 for Tair and 0.55 for VW).

Details about the publication

JournalEnvironmental Modelling and Software
Volume101
Page range1-9
StatusPublished
Release year2018
Language in which the publication is writtenEnglish
DOI10.1016/j.envsoft.2017.12.001
Link to the full texthttps://doi.org/10.1016/j.envsoft.2017.12.001
KeywordsCross-validation; Feature selection; Over-fitting; Random forest; Spatio-temporal; Target-oriented validation

Authors from the University of Münster

Meyer, Hanna
Junior professorship for remote sensing and image processing (Prof. Meyer)
Professorship of Remote Sensing and Spatial Modelling