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Neural networks are increasingly being used in science to infer hidden dynamics of natural systems from noisy observations, a task typically handled by hierarchical models in ecology. This article describes a class of hierarchical models parameterised by neural networks - neural hierarchical models. The derivation of such models analogises the relationship between regression and neural networks. A case study is developed for a neural dynamic occupancy model of North American bird populations, trained on millions of detection/non-detection time series for hundreds of species, providing insights into colonisation and extinction at a continental scale. Flexible models are increasingly needed that scale to large data and represent ecological processes. Neural hierarchical models satisfy this need, providing a bridge between deep learning and ecological modelling that combines the function representation power of neural networks with the inferential capacity of hierarchical models.
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Maxwell B. Joseph
Ecology Letters
University of Colorado Boulder
Cooperative Institute for Research in Environmental Sciences
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Maxwell B. Joseph (Thu,) studied this question.
www.synapsesocial.com/papers/69e417f290d379e88cd37bf4 — DOI: https://doi.org/10.1111/ele.13462