spatialnbda: Performs spatial NBDA in a Bayesian context
Network based diffusion analysis (NBDA) allows inference on
the asocial and social transmission of information. This may involve
the social transmission of a particular behaviour such as tool use, for example.
For the NBDA, the key parameters estimated are the social effect and baseline rate
parameters. The baseline rate parameter gives the rate at which the behaviour
is first performed (or acquired) asocially amongst the individuals in a given population.
The social effect parameter quantifies the effect of the social associations amongst
the individuals on the rate at which each individual first performs or displays
the behaviour. Spatial NBDA involves incorporating spatial information in the analysis.
This is done by incorporating social networks derived from
spatial point patterns (of the home bases of the individuals under study). In addition,
a spatial covariate such as vegetation cover, or slope may be included in the modelling
process.
Version: |
1.0 |
Depends: |
SocialNetworks (≥ 1.1), mvtnorm (≥ 0.9) |
Published: |
2014-09-19 |
Author: |
Glenna Nightingale |
Maintainer: |
Glenna Nightingale <glenna.evans at gmail.com> |
License: |
GPL-2 | GPL-3 [expanded from: GPL] |
NeedsCompilation: |
no |
CRAN checks: |
spatialnbda results |
Documentation:
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