Numeric Matrices K-NN and PCA Imputation


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Documentation for package ‘slideimp’ version 1.0.0

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col_vars Calculate Matrix Column Variance
compute_metrics Compute Prediction Accuracy Metrics
compute_metrics.data.frame Compute Prediction Accuracy Metrics
compute_metrics.slideimp_tune Compute Prediction Accuracy Metrics
group_imp Grouped K-NN or PCA Imputation
knn_imp K-Nearest Neighbor Imputation for Numeric Matrices
mean_imp_col Column Mean Imputation
pca_imp Impute Numeric Matrix with PCA Imputation
prep_groups Prepare Groups for Imputation
print.slideimp_results Print a 'slideimp_results' Object
print.slideimp_sim Print a 'slideimp_sim' Object
print.slideimp_tbl Print a 'slideimp_tbl' Object
register_group_resolver Register a Group Resolver
sample_na_loc Sample Missing Value Locations with Constraints
sim_mat Simulate Matrix with Metadata
slide_imp Sliding Window K-NN or PCA Imputation
tune_imp Tune Parameters for Imputation Methods