Statistical and Machine Learning Engine for Long-Term Natural Resource Management Data


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Documentation for package ‘NRMstatsML’ version 0.1.4

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NRMstatsML-package NRMstatsML: Statistical and Machine Learning Engine for Long-Term NRM Data
NRMstatsML NRMstatsML: Statistical and Machine Learning Engine for Long-Term NRM Data
nrm_arima ARIMA model for NRM time series
nrm_automl Automated model selection and tuning
nrm_benchmark Benchmark model metrics on a hold-out test set
nrm_bootstrap Bootstrap uncertainty estimation
nrm_data_check Validate and summarise an NRM dataset
nrm_did Difference-in-Differences (DiD) estimator
nrm_example Example long-term NRM dataset
nrm_forecast Forecast NRM time series
nrm_mann_kendall Mann-Kendall trend test
nrm_monte_carlo Monte Carlo uncertainty simulation
nrm_multivariate Multivariate regression for Natural Resource Management systems
nrm_optimize_input Optimise input level for maximum response
nrm_panel Panel data regression for Natural Resource Management experiments
nrm_plot Generic plot for NRMstatsML objects
nrm_pls Partial Least Squares (PLS) regression
nrm_response_curve Fit a response curve to NRM data
nrm_sem Structural Equation Modelling (SEM)
nrm_sens_slope Sen's slope estimator
nrm_structural_break Structural break detection
nrm_summary Generic summary for NRMstatsML objects
nrm_trend Comprehensive trend analysis for NRM time series
nrm_uncertainty Uncertainty analysis for NRM model outputs