Multitask learning of environmental spatial data


Autoria(s): Kanevski M.; Seppelt R. (ed.); Voinov A.A. (ed.); Lange S. (ed.); Bankamp D. (ed.)
Data(s)

2012

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