Estimate and Simulate from Location Dependent Marked Point Processes


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Documentation for package ‘ldmppr’ version 1.1.3

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as.data.frame.ldmppr_budgets Optimization budget specification object
as.data.frame.ldmppr_fit Fitted point-process model object
as.data.frame.ldmppr_grids Grid schedule object
as.data.frame.ldmppr_sim Simulated marked point process object
as.list.ldmppr_budgets Optimization budget specification object
as.list.ldmppr_grids Grid schedule object
as_nloptr Fitted point-process model object
as_nloptr.ldmppr_fit Fitted point-process model object
check_model_fit Check the fit of an estimated model using global envelope tests
coef.ldmppr_fit Fitted point-process model object
estimate_process_parameters Estimate point process parameters using log-likelihood maximization
extract_covars Extract covariate values from a set of rasters
generate_mpp Generate a marked process given locations and marks
ldmppr_budgets Create an optimization budget specification for estimate_process_parameters()
ldmppr_budgets-class Optimization budget specification object
ldmppr_fit Fitted point-process model object
ldmppr_grids Create a grid schedule for estimate_process_parameters()
ldmppr_grids-class Grid schedule object
ldmppr_mark_model Mark model object
ldmppr_model_check Model fit diagnostic object
ldmppr_sim Simulated marked point process object
length.ldmppr_budgets Optimization budget specification object
length.ldmppr_grids Grid schedule object
load_mark_model Mark model object
logLik.ldmppr_fit Fitted point-process model object
medium_example_data Medium Example Data
mpp.ldmppr_sim Simulated marked point process object
nobs.ldmppr_fit Fitted point-process model object
nobs.ldmppr_sim Simulated marked point process object
plot.ldmppr_fit Fitted point-process model object
plot.ldmppr_model_check Model fit diagnostic object
plot.ldmppr_sim Simulated marked point process object
plot_mpp Plot a marked point process
power_law_mapping Gentle decay (power-law) mapping function from sizes to arrival times
predict.ldmppr_mark_model Mark model object
predict_marks Predict values from the mark distribution
print.ldmppr_budgets Optimization budget specification object
print.ldmppr_fit Fitted point-process model object
print.ldmppr_grids Grid schedule object
print.ldmppr_mark_model Mark model object
print.ldmppr_model_check Model fit diagnostic object
print.ldmppr_sim Simulated marked point process object
print.summary.ldmppr_budgets Optimization budget specification object
print.summary.ldmppr_fit Fitted point-process model object
print.summary.ldmppr_grids Grid schedule object
print.summary.ldmppr_mark_model Mark model object
print.summary.ldmppr_model_check Model fit diagnostic object
print.summary.ldmppr_sim Simulated marked point process object
save_mark_model Mark model object
save_mark_model.ldmppr_mark_model Mark model object
scale_rasters Scale a set of rasters
simulate_mpp Simulate a realization of a location dependent marked point process
simulate_sc Simulate from the self-correcting model
small_example_data Small Example Data
summary.ldmppr_budgets Optimization budget specification object
summary.ldmppr_fit Fitted point-process model object
summary.ldmppr_grids Grid schedule object
summary.ldmppr_mark_model Mark model object
summary.ldmppr_model_check Model fit diagnostic object
summary.ldmppr_sim Simulated marked point process object
thin_st_fast calculates acceptance for thinning mechanism during simulation
train_mark_model Train a flexible model for the mark distribution
[.ldmppr_budgets Optimization budget specification object
[.ldmppr_grids Grid schedule object