Detect and Treat Outliers in Data Mining


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Documentation for package ‘quickOutlier’ version 0.1.5

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detect_categorical_outliers Detect Rare Categories (Categorical Outliers)
detect_density Detect Density-Based Anomalies (LOF)
detect_iforest Detect Outliers using Isolation Forest (Machine Learning)
detect_multivariate Detect Multivariate Anomalies (Mahalanobis Distance)
detect_outliers Detect Anomalies in a Data Frame
detect_ts_outliers Detect Anomalies in Time Series using STL Decomposition
diagnose_influence Diagnose Influential Points in Linear Models (Cook's Distance)
plot_interactive Create an Interactive Outlier Plot
plot_outliers Plot Outliers with ggplot2
scan_data Scan Entire Dataset for Outliers
treat_outliers Treat Outliers (Winsorization/Capping)