April 11, 2024, 4:42 a.m. | Hanna Meyer, Marvin Ludwig, Carles Mil\`a, Jan Linnenbrink, Fabian Schumacher

cs.LG updates on arXiv.org arxiv.org

arXiv:2404.06978v1 Announce Type: cross
Abstract: One key task in environmental science is to map environmental variables continuously in space or even in space and time. Machine learning algorithms are frequently used to learn from local field observations to make spatial predictions by estimating the value of the variable of interest in places where it has not been measured. However, the application of machine learning strategies for spatial mapping involves additional challenges compared to "non-spatial" prediction tasks that often originate from …

abstract algorithms arxiv assessment cs.lg environmental environmental science key learn machine machine learning machine learning algorithms map package prediction prediction models predictions q-bio.qm science space space and time spatial stat.ml training type value variables

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