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MRCV (version 0.3-3)

Methods for Analyzing Multiple Response Categorical Variables (MRCVs)

Description

The MRCV package provides functions for analyzing the association between one single response categorical variable (SRCV) and one multiple response categorical variable (MRCV), or between two or three MRCVs. A modified Pearson chi-square statistic can be used to test for marginal independence for the one or two MRCV case, or a more general loglinear modeling approach can be used to examine various other structures of association for the two or three MRCV case. Bootstrap- and asymptotic-based standardized residuals and model-predicted odds ratios are available, in addition to other descriptive information.

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Version

Install

install.packages('MRCV')

Monthly Downloads

433

Version

0.3-3

License

GPL (>= 3)

Maintainer

Natalie Koziol

Last Published

September 4th, 2014

Functions in MRCV (0.3-3)

farmer3

Data for Three MRCVs from the Kansas Farmer Survey
MI.test

Test for Marginal Independence
predict.genloglin

Calculate Observed and Model-Predicted Odds Ratios for MRCV Data
genloglin

Model the Association Among Two or Three MRCVs
print.SPMI

Control Printed Display of Objects of Class "SPMI"
sealion

Steller Sea Lion Scat Data of Riemer, Wright, and Brown (2011)
item.response.table

Create an Item Response Table or Data Frame
print.genloglin

Control Printed Display of MRCV Regression Modeling Objects
residuals.genloglin

Calculate Standardized Pearson Residuals for MRCV Data
print.MMI

Control Printed Display of Objects of Class "MMI"
farmer2

Data for Two MRCVs from the Kansas Farmer Survey
farmer1

Data for One SRCV and One MRCV from the Kansas Farmer Survey
summary.genloglin

Summarize Two or Three MRCV Model Fit Information
anova.genloglin

Perform MRCV Model Comparison Tests
marginal.table

Create a Marginal Table
MRCV-package

Methods for Analyzing Multiple Response Categorical Variables