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Patrick Schratz
Patrick Schratz
Verified email at uni-jena.de - Homepage
Title
Cited by
Cited by
Year
Hyperparameter tuning and performance assessment of statistical and machine-learning algorithms using spatial data
P Schratz, J Muenchow, E Iturritxa, J Richter, A Brenning
Ecological Modelling 406, 109-120, 2019
380*2019
mlr3: A modern object-oriented machine learning framework in R
M Lang, M Binder, J Richter, P Schratz, F Pfisterer, S Coors, Q Au, ...
Journal of Open Source Software 4 (44), 1903, 2019
264*2019
Predicting forest cover in distinct ecosystems: The potential of multi-source Sentinel-1 and-2 data fusion
K Heckel, M Urban, P Schratz, MD Mahecha, C Schmullius
Remote Sensing 12 (2), 302, 2020
592020
Package ‘RSAGA’
A Brenning, D Bangs, M Becker, P Schratz, F Polakowski
The Comprehensive R Archive Network https://CRAN. R-project. org/package= RSAGA, 2018
42*2018
The performance of landslide susceptibility models critically depends on the quality of digital elevation models
J Brock, P Schratz, H Petschko, J Muenchow, M Micu, A Brenning
Geomatics, Natural Hazards and Risk 11 (1), 1075-1092, 2020
412020
RQGIS: Integrating R with QGIS for Statistical Geocomputing.
J Muenchow, P Schratz, A Brenning
R Journal 9 (2), 2017
332017
parallelMap: Unified interface to parallelization back-ends
B Bischl, M Lang, P Schratz
R package version 1, 2015
302015
package’oddsratio’: Odds ratio calculation for GAM (M) s & GLM (M) s
PR Schratz
R Foundation for Statistical Computing: Vienna, Austria, 2017
28*2017
mlr3verse: Easily install and load the’mlr3’package family
M Lang, P Schratz
R package version 0.2 1, 2021
162021
Woody cover mapping in the savanna ecosystem of the Kruger National Park using Sentinel-1 C-Band time series data
M Urban, K Heckel, C Berger, P Schratz, IPJ Smit, T Strydom, J Baade, ...
koedoe 62 (1), 1-6, 2020
152020
FSelectorRcpp:’Rcpp’implementation of’FSelector’entropy-based feature selection algorithms with a sparse matrix support
Z Zawadzki, M Kosinski, K Slomczynski, D Skrzypiec, P Schratz
R package version 0.3 8, 2021
142021
mlr: Machine Learning in R., 2013
B Bischl, M Lang, L Kotthoff, J Schiffner, J Richter, Z Jones, G Casalicchio, ...
URL https://CRAN. R-project. org/package= mlr. R package version 2, 455, 0
14
mlr3book
M Becker, M Binder, B Bischl, N Foss, L Kotthoff, M Lan, F Pfisterer, ...
URl: https://mlr3book. mlr-org. com 28, 29-30, 2021
112021
Mlr3spatiotempcv: Spatiotemporal resampling methods for machine learning in R
P Schratz, M Becker, M Lang, A Brenning
arXiv preprint arXiv:2110.12674, 2021
102021
Iml: Interpretable machine learning
C Molnar, P Schratz
R package version 0.5 1, 2018
92018
Monitoring forest health using hyperspectral imagery: Does feature selection improve the performance of machine-learning techniques?
P Schratz, J Muenchow, E Iturritxa, J Cortés, B Bischl, A Brenning
Remote Sensing 13 (23), 4832, 2021
62021
Machine learning in R
B Bischl, M Lang, L Kotthoff, J Schiffner, J Richter, Z Jones, G Casalicchio, ...
R-Package, TU Dortmund, URL http://r-forge. rproject. org/projects/mlr, 2010
62010
mlr3: Machine learning in R—Next generation
M Lang, B Bischl, J Richter, P Schratz, G Casalicchio, S Coors, Q Au, ...
52020
Monitoring and predictive mapping of floristic biodiversity along a climatic gradient in ENSO's terrestrial core region, NW Peru
J Muenchow, P Dieker, T Böttcher, J Brock, G Didenko, T Fremout, ...
Ecography 43 (12), 1878-1890, 2020
42020
Package ‘iml’
C Molnar, P Schratz
R CRAN, 2020
42020
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Articles 1–20