| theftdlc-package | Analyse and Interpret Time Series Features |
| calculate_interval | Calculate interval summaries with a measure of central tendency of classification results |
| classify | Fit classifiers using time-series features using a resample-based approach and get a fast understanding of performance |
| cluster | Perform cluster analysis of time series using their feature vectors |
| compare_features | Conduct statistical testing on time-series feature classification performance to identify top features or compare entire sets |
| filter_duplicates | Remove duplicate features that exist in multiple feature sets and retain a reproducible random selection of one of them |
| filter_good_features | Filter resample data sets according to good feature list |
| find_good_features | Helper function to find features in both train and test set that are "good" |
| fit_models | Fit classification model and compute key metrics |
| get_rescale_vals | Calculate central tendency and spread values for all numeric columns in a dataset |
| interval | Calculate interval summaries with a measure of central tendency of classification results |
| make_title | Helper function for converting to title case |
| plot.feature_calculations | Produce a plot for a feature_calculations object |
| plot.feature_projection | Produce a plot for a feature_projection object |
| project | Project a feature matrix into a two-dimensional representation using PCA, MDS, t-SNE, or UMAP ready for plotting |
| reduce_dims | Project a feature matrix into a two-dimensional representation using PCA, MDS, t-SNE, or UMAP ready for plotting |
| resample_data | Helper function to create a resampled dataset |
| rescale_zscore | Calculate z-score for all columns in a dataset using train set central tendency and spread |
| select_stat_cols | Helper function to select only the relevant columns for statistical testing |
| stat_test | Calculate p-values for feature sets or features relative to an empirical null or each other using resampled t-tests |
| theftdlc | Analyse and Interpret Time Series Features |
| tsfeature_classifier | Fit classifiers using time-series features using a resample-based approach and get a fast understanding of performance |