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weightedScores (version 0.9.5.3)

Weighted Scores Method for Regression Models with Dependent Data

Description

The weighted scores method and composite likelihood information criteria as an intermediate step for variable/correlation selection for longitudinal ordinal and count data in Nikoloulopoulos, Joe and Chaganty (2011) , Nikoloulopoulos (2016) and Nikoloulopoulos (2017) .

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Version

Install

install.packages('weightedScores')

Monthly Downloads

141

Version

0.9.5.3

License

GPL (>= 2)

Maintainer

Aristidis Nikoloulopoulos

Last Published

March 23rd, 2020

Functions in weightedScores (0.9.5.3)

marglik

NEGATIVE LOG-LIKELIHOOD ASSUMING INDEPEDENCE WITHIN CLUSTERS
iee

INDEPENDENT ESTIMATING EQUATIONS FOR BINARY AND COUNT REGRESSION
weightMat

WEIGHT MATRICES FOR THE ESTIMATING EQUATIONS
approxbvncdf

APPROXIMATION OF BIVARIATE STANDARD NORMAL DISTRIBUTION
iee.ord

Maximum Likelihood for Ordinal Model
clic

CL1 INFORMATION CRITERIA
cl1

OPTIMIZATION ROUTINE FOR BIVARIATE COMPOSITE LIKELIHOOD FOR MVN COPULA
godambe

INVERSE GODAMBE MATRIX
scoreCov

COVARIANCE MATRIX OF THE UNIVARIATE SCORES
solvewtsc

SOLVING THE WEIGHTED SCORES EQUATIONS WITH INPUTS OF THE WEIGHT MATRICES AND THE DATA
bcl

BIVARIATE COMPOSITE LIKELIHOOD FOR MULTIVARIATE NORMAL COPULA WITH CATEGORICAL AND COUNT REGRESSION
childvisit

Hospital Visit Data
toenail

The toenail infection data
mvnapp

MVN Rectangle Probabilities
wtsc

THE WEIGHTED SCORES EQUATIONS WITH INPUTS OF THE WEIGHT MATRICES AND THE DATA
arthritis

Rheumatoid Arthritis Clinical Trial
weightedScores-package

Weighted Scores Method for Regression Models with Dependent Data
margmodel

DENSITY AND CDF OF THE UNIVARIATE MARGINAL DISTRIBUTION
mvn.deriv

Derivatives of Multivariate Normal Rectangle Probabilities
wtsc.wrapper

THE WEIGHTED SCORES METHOD WITH INPUTS OF THE DATA