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"description": "Stochastic complexity-based conditional independence test for discrete data"
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"description": "Analyse citation data from Google Scholar"
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"name": "R-scico",
"description": "Palettes for R based on the scientific color-maps"
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"description": "R toolbox for unsupervised spectral clustering"
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"description": "Fit discrete distribution models to count data"
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"name": "R-screenshot",
"description": "Take screenshots from R command"
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{
"name": "R-scribe",
"description": "Command argument parsing"
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"name": "R-scrime",
"description": "Analysis of high-dimensional categorical data such as SNP data"
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