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"description": "Plot categorical data using quasirandom noise and density estimates"
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"description": "Variance and skewness decomposition"
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"description": "Vintage Sparse PCA for semi-parametric factor analysis"
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"description": "Wavelets statistics and transforms"
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"name": "R-wbacon",
"description": "Weighted BACON algorithms"
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"description": "Wild binary segmentation for multiple change-point detection"
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