A python3 module for maximum entropy models on networks.
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Updated
Jun 17, 2024 - Python
A python3 module for maximum entropy models on networks.
Randomization of presence/absence species distribution raster data for calculating standardized effect sizes and testing null hypothesis.
Introduction to basic network measurements and working with null models in Networkx.
MCMC algorithms to sample random bipartite graphs with given left and right degree sequences and BJDM.
Code for trait based simulations of network structure and case study
Null Models for Labeled Multi-graphs
Functions to perform the restricted null model described in Felix et al 2017 (DOI: 10.1101/236687).
Commented codes for the IHS model.
How to create randomized matrices in R for analyzing in Pajek.
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