Robust Descriptive Statistics
Descriptive statistics with consistent performance against data from different distributions are considered robust, as they are less affected by outliers. These estimators are generally defined via order statistics or optimizing certain objective functions of data.
The Wolfram Language provides a variety of robust estimators for different applications, including location, dispersion and shape characterization. They are useful in outlier detection and parametric estimation.
Robust Location Measures
Median ▪ Commonest ▪ TrimmedMean ▪ WinsorizedMean ▪ SpatialMedian ▪ CentralFeature ▪ BiweightLocation
Robust Dispersion Measures
TrimmedVariance ▪ WinsorizedVariance ▪ MedianDeviation ▪ InterquartileRange ▪ QuartileDeviation ▪ QnDispersion ▪ SnDispersion ▪ BiweightMidvariance
Robust Shape Measures
QuartileSkewness ▪ EstimatedDistribution ▪ FindDistributionParameters
Order Statistics
Min ▪ Max ▪ MinMax ▪ Sort ▪ Ordering ▪ RankedMin ▪ RankedMax ▪ Quantile ▪ Quartiles ▪ TakeLargest ▪ TakeSmallest