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A new method for faster and more accurate inference of species
  associations from big community data
v1v2v3v4v5 (latest)

A new method for faster and more accurate inference of species associations from big community data

Methods in Ecology and Evolution (Methods Ecol. Evol.), 2020
11 March 2020
Maximilian Pichler
F. Hartig
    BDL
ArXiv (abs)PDFHTML

Papers citing "A new method for faster and more accurate inference of species associations from big community data"

4 / 4 papers shown
BioAnalyst: A Foundation Model for Biodiversity
BioAnalyst: A Foundation Model for Biodiversity
Athanasios Trantas
Martino Mensio
Stylianos Stasinos
Sebastian Gribincea
Taimur Khan
Damian Podareanu
Aliene van der Veen
122
2
0
11 Jul 2025
MALPOLON: A Framework for Deep Species Distribution Modeling
MALPOLON: A Framework for Deep Species Distribution Modeling
Théo Larcher
Lukás Picek
Benjamin Deneu
Titouan Lorieul
Maximilien Servajean
Alexis Joly
GP
196
2
0
26 Sep 2024
cito: An R package for training neural networks using torch
cito: An R package for training neural networks using torch
Christian Amesoeder
F. Hartig
Maximilian Pichler
224
5
0
16 Mar 2023
Generalized Matrix Factorization: efficient algorithms for fitting
  generalized linear latent variable models to large data arrays
Generalized Matrix Factorization: efficient algorithms for fitting generalized linear latent variable models to large data arraysJournal of machine learning research (JMLR), 2020
L. Kidzinski
Francis K. C. Hui
D. Warton
Trevor Hastie
294
12
0
06 Oct 2020
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