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"description": "Introductory Statistics with R (2nd ed.)"
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"description": "Integral transformation methods for SDR in regression"
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"description": "Provides iterator construct"
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"description": "Approximate probability densities via iterated Laplace approximations"
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"description": "Fast, compact iterators and tools"
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"description": "Efficient iterator for permutations and combinations"
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"description": "Iterator tools"
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"description": "Estimation and diagnostic tools for instrumental variables designs"
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"name": "R-ivmodel",
"description": "Statistical inference and sensitivity analysis for instrumental variables model"
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"description": "2SLS Regression with Diagnostics in R"
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"description": "Interval Vectors"
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"name": "R-ivx",
"description": "Robust econometric inference for predictive regressions"
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"name": "R-iwmm",
"description": "Importance-weighted moment matching"
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"name": "R-iZID",
"description": "Identify Zero-Inflated Distributions"
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"name": "R-jaccard",
"description": "Test similarity between binary data using Jaccard–Tanimoto coefficients"
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"description": "Classical Jacobi eigenvalue algorithm"
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"name": "R-JADE",
"description": "Blind source separation methods based on joint diagonalization and some BSS performance criteria"
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"name": "R-jaggR",
"description": "Supporting files and functions for the Bayesian Modelling with JAGS"
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"description": "Jane Austen’s Complete Novels"
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"name": "R-Jaya",
"description": "Maximization/minimization of a fitness function using the Jaya Algorithm (JA)"
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"name": "R-jeek",
"description": "Fast and scalable joint estimator for integrating additional knowledge in learning multiple related sparse gaussian graphical models"
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{
"name": "R-jenga",
"description": "Fast extrapolation of time features using k-nearest neighbors"
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{
"name": "R-jetpack",
"description": "Friendly package manager"
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{
"name": "R-jfa",
"description": "Statistical methods for auditing"
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{
"name": "R-jiebaR",
"description": "Chinese text segmentation, keyword extraction and speech tagging"
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"name": "R-jiebaRD",
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"name": "R-jinjar",
"description": "Template engine inspired by Jinja"
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{
"name": "R-jipApprox",
"description": "Approximate inclusion probabilities for survey sampling"
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"name": "R-JM",
"description": "Joint modelling of longitudinal and survival data"
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{
"name": "R-jmatrix",
"description": "Read from/write to disk matrices with any data type in a binary format"
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"name": "R-JMbayes",
"description": "Joint modelling of longitudinal and time-to-event data under a Bayesian approach"
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"name": "R-JMbayes2",
"description": "Network meta-analysis using Bayesian methods"
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{
"name": "R-JMdesign",
"description": "Power calculations for joint modelling of longitudinal and survival data"
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{
"name": "R-jmv",
"description": "The Jamovi analyses"
},
{
"name": "R-jmvconnect",
"description": "Connect to the Jamovi statistical spreadsheet"
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{
"name": "R-jmvcore",
"description": "Dependencies for the Jamovi framework"
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{
"name": "R-job",
"description": "Run R code as an RStudio job"
},
{
"name": "R-joineR",
"description": "Joint modelling of repeated measurements and time-to-event data"
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{
"name": "R-joineRML",
"description": "Joint modelling of multivariate longitudinal data and time-to-event outcomes"
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{
"name": "R-joinet",
"description": "Multivariate elastic net regression"
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{
"name": "R-JointAI",
"description": "Joint Analysis and Imputation of Incomplete Data"
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{
"name": "R-jointDiag",
"description": "Joint approximate diagonalization of a set of square matrices"
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