Leaf Area Modeling, Evaluation, and Prediction


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Documentation for package ‘leafareaR’ version 0.0.1

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la_abs_bias_metric Calculate absolute bias
la_add_equation_to_results Add equation information to a results table
la_bias Calculate prediction bias
la_build_equation Build a readable equation from a fitted model
la_ccc Calculate Lin's concordance correlation coefficient
la_create_derived Create derived leaf parameters
la_d Calculate Willmott's index of agreement
la_descriptive_default Summarize the default leaf area variables
la_descriptive_stats Calculate descriptive statistics for selected variables
la_evaluate_linear_models Evaluate all linear models from a 'la_fit_linear_models()' object
la_evaluate_mixed_models Evaluate all mixed models from a 'la_fit_mixed_models()' object
la_evaluate_model Evaluate a single fitted model
la_evaluate_nonlinear_models Evaluate all nonlinear models from a 'la_fit_nonlinear_models()' object
la_extract_coefficients Extract model coefficients
la_feature_display_names Display labels for leaf variables
la_feature_labels Display labels for leaf variables
la_fit_linear_models Fit candidate linear models for leaf area estimation
la_fit_mixed_models Fit candidate linear mixed-effects models for leaf area estimation
la_fit_nonlinear_models Fit multiple nonlinear models
la_input_overview Summarize a validated leaf area dataset
la_linear_fitted_values Extract fitted values from linear model results
la_linear_formulas List default linear model formulas
la_list_derived List available derived variables
la_mae Calculate mean absolute error
la_mape Calculate mean absolute percentage error
la_matrixplot Create a matrix plot for selected variables
la_matrixplot_default Create a default matrix plot for leaf variables
la_metric_table Calculate a standard metric table from observed and predicted values
la_mixed_coefficients Extract coefficients from a mixed model
la_mixed_fitted_values Extract fitted values from mixed-model results
la_mixed_formulas List default mixed-model formulas
la_mse Calculate mean squared error
la_nonlinear_coefficients Return coefficients from a selected nonlinear model
la_nonlinear_fitted_values Extract observed, fitted values and residuals for a selected nonlinear model
la_nonlinear_specs Default nonlinear model specifications
la_nse Calculate Nash-Sutcliffe efficiency
la_plot_observed_predicted Observed versus predicted leaf area plot
la_plot_residuals Residuals versus fitted values plot
la_plot_residual_histogram Histogram of residuals
la_plot_residual_qq QQ plot of residuals
la_plot_scatter Scatter plot between two selected variables
la_plot_scatter_set Scatter plots for multiple selected predictors against leaf area
la_predict_from_results Predict using one selected model from a fit object
la_predict_linear_model Predict from a linear model
la_predict_mixed_model Predict from a mixed model
la_predict_model Predict from a fitted model
la_predict_nonlinear_model Predict from a nonlinear model
la_predict_top_ranked Predict from the top-ranked model
la_r Calculate Pearson correlation coefficient
la_rank_models Rank models using a simple metric priority rule
la_rank_models_by_metrics Rank models by average metric positions
la_rank_models_weighted Rank models using a weighted score
la_rmse Calculate root mean squared error
la_r_squared Calculate coefficient of determination
la_top_models Select the top models from a ranking table
la_validate_input Validate and standardize input data for leaf area analysis
leafarea_sample Example dataset for leaf area modeling
run_leafareaR_app Launch the built-in Shiny application