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Título : A computationally efficient procedure for combining ecological datasets by means of sequential consensus inference
Autor : Figueira, Mario; Conesa, David; Lopez-Quilez, Antonio; Paradinas, Iosu
Resumen : In ecology and environmental sciences, combining diverse datasets has become an essential tool for managing the increasing complexity and volume of ecological data. However, as data complexity and volume grow, the computational demands of previously proposed models for data integration escalate, creating significant challenges for practical implementation. This study introduces a sequential consensus Bayesian inference procedure designed to offer the flexibility of integrated models while significantly reducing computational costs. The method is based on sequentially updating some model parameters and hyperparameters, and combining information about random effects after the sequential procedure is complete. The implementation of the approach is provided through two different algorithms. The strengths, limitations, and practical use of the method are explained and discussed throughout the methodology and examples. Finally, we demonstrate the method's performance using two different examples with real ecological data, highlighting its strengths and limitations in practical ecological and environmental applications.
Fecha de publicación : 2025
Tipo de documento: Journal Article
DOI: 10.1007/s10651-025-00653-x
URI : http://dspace.azti.es/handle/24689/2695
Aparece en las tipos de publicación: Artículos científicos



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