Network-based diffusion analysis (NBDA) is a statistical method that allows the researcher to identify and quantify a social influence on the spread of behaviour through a population. Hitherto, NBDA analyses have not directly modelled spatial population structure. Here we present a spatial extension of NBDA, applicable to diffusion data where the spatial locations of individuals in the population, or of their home bases or nest sites, are available. The method is based on the estimation of inter-individual associations (for association matrix construction) from the mean inter-point distances as represented on a spatial point pattern of individuals, nests or home bases. We illustrate the method using a simulated dataset, and show how environ...
A basic understanding of how the landscape impedes, or creates resistance to, the dispersal of organ...
Spatial dependence exists whenever the expected utility of one unit of analysis is affected by the d...
This study provides an empirical application of the Bayesian approach for modelling the evolution of...
Network-based diffusion analysis (NBDA) is a statistical method that allows the researcher to identi...
Network-based diffusion analysis (NBDA) is a statistical method that allows the researcher to identi...
Network-based diffusion analysis (NBDA) is a statistical method that allows the researcher to identi...
Description Network based diffusion analysis (NBDA) allows inference on the asocial and social trans...
Network-based diffusion analysis (NBDA) is a statistical technique for detecting the social transmis...
A number of recent studies have used Network Based Diffusion Analysis (NBDA) to detect the role of s...
1. Although social learning capabilities are taxonomically widespread, demonstrating that freely int...
The data for running the network based diffusion analyses described in the paper
Statistical approaches for inferring the spatial distribution of taxa (Species Distribution Models, ...
© 2019, The Author(s). Machine learning (ML) algorithms steer agent decisions in agent-based models ...
Our understanding of a biological population can be greatly enhanced by modelling their distribution...
This study investigates the effect of spatial correlation using a Bayesian spatial framework to mode...
A basic understanding of how the landscape impedes, or creates resistance to, the dispersal of organ...
Spatial dependence exists whenever the expected utility of one unit of analysis is affected by the d...
This study provides an empirical application of the Bayesian approach for modelling the evolution of...
Network-based diffusion analysis (NBDA) is a statistical method that allows the researcher to identi...
Network-based diffusion analysis (NBDA) is a statistical method that allows the researcher to identi...
Network-based diffusion analysis (NBDA) is a statistical method that allows the researcher to identi...
Description Network based diffusion analysis (NBDA) allows inference on the asocial and social trans...
Network-based diffusion analysis (NBDA) is a statistical technique for detecting the social transmis...
A number of recent studies have used Network Based Diffusion Analysis (NBDA) to detect the role of s...
1. Although social learning capabilities are taxonomically widespread, demonstrating that freely int...
The data for running the network based diffusion analyses described in the paper
Statistical approaches for inferring the spatial distribution of taxa (Species Distribution Models, ...
© 2019, The Author(s). Machine learning (ML) algorithms steer agent decisions in agent-based models ...
Our understanding of a biological population can be greatly enhanced by modelling their distribution...
This study investigates the effect of spatial correlation using a Bayesian spatial framework to mode...
A basic understanding of how the landscape impedes, or creates resistance to, the dispersal of organ...
Spatial dependence exists whenever the expected utility of one unit of analysis is affected by the d...
This study provides an empirical application of the Bayesian approach for modelling the evolution of...