Multitask learning of environmental spatial data
Data(s) |
2012
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Resumo |
The present research deals with an application of artificial neural networks for multitask learning from spatial environmental data. The real case study (sediments contamination of Geneva Lake) consists of 8 pollutants. There are different relationships between these variables, from linear correlations to strong nonlinear dependencies. The main idea is to construct a subsets of pollutants which can be efficiently modeled together within the multitask framework. The proposed two-step approach is based on: 1) the criterion of nonlinear predictability of each variable ?k? by analyzing all possible models composed from the rest of the variables by using a General Regression Neural Network (GRNN) as a model; 2) a multitask learning of the best model using multilayer perceptron and spatial predictions. The results of the study are analyzed using both machine learning and geostatistical tools. |
Identificador |
http://serval.unil.ch/?id=serval:BIB_A718A88D7EA1 isbn:978-88-9035-742-8 |
Idioma(s) |
en |
Publicador |
International Environmental Modelling and Software Society |
Fonte |
International Congress on Environmental Modelling and Software: Managing resources of a limited planet, sixth biennial meeting, Leipzig, Germany |
Palavras-Chave | #Machine learning algorithms; multitask learning; environmental multivariate; data; geostatistics |
Tipo |
info:eu-repo/semantics/conferenceObject inproceedings |