quickOutlier 0.1.5
- Added a
NEWS.md file to track package changes.
Functions
detect_categorical_outliers(): Detects low-frequency
outliers in categorical variables based on a percentage threshold.
detect_lof(): Implements density-based outlier
detection using the Local Outlier Factor (LOF) algorithm (via
dbscan).
detect_iforest(): Detects outliers using the Isolation
Forest algorithm (via isotree), effective for
high-dimensional data.
detect_multivariate(): Identifies multivariate outliers
using Mahalanobis distance with a Chi-square threshold.
detect_outliers_univ(): Performs univariate outlier
detection using either Z-score or Interquartile Range (IQR)
methods.
detect_ts_outliers(): Identifies anomalies in time
series data using STL decomposition.
diagnose_influence(): Diagnoses influential
observations in linear regression models using Cook’s distance.
plot_interactive(): Creates interactive scatter plots
using plotly to visualize multivariate outliers.
plot_outliers(): Generates static ggplot2
visualizations combining boxplots and jittered points to show
outliers.
scan_data(): Scans the entire dataset and provides a
summary table of outlier counts and percentages for all numeric
columns.
treat_outliers(): Implements Winsorization (capping) to
treat outliers by replacing extreme values with calculated
thresholds.