Applying the maximum entropy principle to neural networks enhances multi-species distribution models
Maxime Ryckewaert, Diego Marcos, Christophe Botella, Maximilien Servajean, Pierre Bonnet, Alexis Joly

TL;DR
This paper introduces DeepMaxent, a neural network-based method that applies the maximum entropy principle to improve multi-species distribution modeling, especially in biased sampling regions, outperforming traditional SDMs.
Contribution
DeepMaxent uniquely combines neural networks with the maximum entropy principle to automatically learn shared features among species for better distribution modeling.
Findings
DeepMaxent outperforms Maxent and other SDMs across multiple regions.
The method is especially effective in regions with uneven sampling.
DeepMaxent provides more accurate multi-species predictions.
Abstract
The rapid expansion of citizen science initiatives has led to a significant growth of biodiversity databases, and particularly presence-only (PO) observations. PO data are invaluable for understanding species distributions and their dynamics, but their use in a Species Distribution Model (SDM) is curtailed by sampling biases and the lack of information on absences. Poisson point processes are widely used for SDMs, with Maxent being one of the most popular methods. Maxent maximises the entropy of a probability distribution across sites as a function of predefined transformations of variables, called features. In contrast, neural networks and deep learning have emerged as a promising technique for automatic feature extraction from complex input variables. Arbitrarily complex transformations of input variables can be learned from the data efficiently through backpropagation and stochastic…
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Taxonomy
TopicsSpecies Distribution and Climate Change
MethodsParrot optimizer: Algorithm and applications to medical problems
