Fitting and Assessing Neighborhood Models of the Effect of Interspecific Competition on the Growth of Trees


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Documentation for package ‘forestecology’ version 0.2.0

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add_buffer_variable Identify trees in the buffer region
autoplot.comp_bayes_lm Plot Bayesian model parameters
blocks_ex Example cross validation grid
census_1_ex Example input census data for package use
census_2008_bw Michigan Big Woods research plot data
census_2014_bw Michigan Big Woods research plot data
census_2_ex Example input census data for package use
compute_buffer_region Compute buffer to a region.
compute_growth Compute growth of trees
comp_bayes_lm Fit Bayesian competition model
comp_bayes_lm_ex Example bayesian competition model fit
create_bayes_lm_data Create input data frame for Bayesian regression
create_focal_vs_comp Create focal versus competitor trees data frame
focal_vs_comp_distance Return all pairwise distances between two data frames of trees
focal_vs_comp_ex Example focal versus comp data frame
forestecology 'forestecology' package
growth_ex Example growth data frame for small example
growth_spatial_ex Example growth data frame with spatial data for small example
growth_toy Example input data for 'create_focal_vs_comp()'
predict.comp_bayes_lm Make predictions based on fitted Bayesian model
run_cv Run the bayesian model with spatial cross validation
species_bw Phylogenic groupings and trait based clustering of various tree species
study_region_bw Bigwoods forest study region boundary
study_region_ex Study region for example data