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"description": "Bayesian psychometric measurement using RStan"
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"name": "R-measurementProtocol",
"description": "Send data from R to the Measurement Protocol"
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"name": "R-measures",
"description": "Performance measures for statistical learning"
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"description": "Flexible mediation analysis using natural effect models"
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"description": "Datasets from Mixed-Effects Models in S"
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"name": "R-meta",
"description": "General package for meta-analysis"
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"description": "R package with common components of metabias packages"
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"name": "R-metaBLUE",
"description": "BLUE for combining location and scale information in a meta-analysis"
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"name": "R-metaBMA",
"description": "Bayesian model averaging for random and fixed effects meta-analysis"
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{
"name": "R-metacor",
"description": "Meta-analysis of correlation coefficients"
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"name": "R-metadat",
"description": "Meta-analysis datasets"
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"name": "R-metafor",
"description": "Meta-analysis package for R"
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"description": "Meta-analysis of medians"
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"description": "Robust meta-analysis and meta-regression"
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"name": "R-metapod",
"description": "Meta-analyses on p-values of differential analyses"
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"description": "Replicability-analysis tools for meta-analysis"
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"name": "R-metatest",
"description": "Fit and test metaregression models"
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"description": "Utility functions for conducting and interpreting meta-analyses"
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"description": "Tools for easier analysis of meteorological fields"
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"description": "Prediction performance metrics"
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"description": "Random fields on metric graphs"
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"name": "R-Metrics",
"description": "Evaluation metrics for machine learning"
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"name": "R-MetricsWeighted",
"description": "Weighted metrics, scoring functions and performance measures for machine learning"
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{
"name": "R-metRology",
"description": "Support for metrological applications"
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{
"name": "R-mets",
"description": "Analysis of Multivariate Event Times"
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{
"name": "R-mev",
"description": "Knowledge discovery by accuracy maximization"
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{
"name": "R-mexhaz",
"description": "Mixed effect excess hazard models"
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{
"name": "R-MFDFA",
"description": "Multi-Fractal Detrended Fluctuation Analysis"
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