RT info:eu-repo/semantics/article T1 Assessing the robustness of variable selection methods when accounting for co-registration errors in the estimation of forest biophysical and ecological attributes A1 Pascual Sanz, Adrián A1 Bravo Oviedo, Felipe A1 Ordoñez Alonso, Ángel Cristobal K1 Remote sensing K1 Machine learning K1 Positioning K1 Laser scanning K1 Random forests K1 3106 Ciencia Forestal AB The estimation of forest attributes using active remote sensing data and sampling designs is a solid scientific discipline oriented to derive structural information from forest ecosystems. In this study, we examined the problem of selecting predictor variables derived from airborne laser scanning (ALS) when using stepwise and multiple linear regression, and when using kNN imputation using Random Forests (RF) to select predictor variables. Systems of forest attributes and ecological indicators were estimated using ALS statistics and ground data collected in Central-East Spain, on two Mediterranean pine forest areas. Co-registration errors were simulated by means of altering ground data coordinates. The larger the co-registration error, the higher the variation in the selected ALS-based predictors in the parametric approach, which was less affected than the RF-based selection. In both cases, the final performance of the models was not as affected by co-registration errors as the observed variation in the selection of variables: the impact was around 1% in the parametric approach while the value reached the 8% for both stand basal area and the Gini-index under the non-parametric method. The forest biophysical attributes of the set behaved differently towards altering the co-registration factor in both cases. To control the co-registration factor between remote sensing data sources and ground surveys is an essential step to reduce uncertainty in data interpretation and in the modeling of forest attributes. PB Elsevier SN 0304-3800 YR 2019 FD 2019 LK https://uvadoc.uva.es/handle/10324/83294 UL https://uvadoc.uva.es/handle/10324/83294 LA eng NO Ecological Modelling, July 2019, volume 403, p. 11-19 NO Producción Científica DS UVaDOC RD 02-mar-2026