fishmethods (version 1.10-2)

clus.rho: Intracluster Correlation Coefficients for Clustered Data

Description

Calculates the intracluster correlation coefficients according to Lohr (1999) and Donner (1986) for a single group

Usage

clus.rho(popchar=NULL, cluster = NULL, type = c(1,2,3), est = 0, nboot = 500)

Arguments

popchar

vector containing containing the population characteristic (e.g., length, weight, etc.). One line per individual.

cluster

vector containing the variable used to identify the cluster. Identifier can be numeric or character.

type

method of intracluster correlation calculation. 1 = Equation 5.8 of Lohr (1999), 2 = Equation 5.10 in Lohr (1999) and 3 = ANOVA. Default = c(1,2,3).

est

estimate variance and percentiles of intracluster correlation coefficients via boostrapping. 0 = No estimation (Default), 1 = Estimate.

nboot

number of boostrap replicates for estimation of variance. nboot = 500 (Default).

Value

rho values, associated statistics, and bootstrap replicates

Details

The intracluster correlation coefficient (rho) provides a measure of similarity within clusters. type = 1 is defined to be the Pearson correlation coefficient for NM(M-1)pairs (yij,yik) for i between 1 and N and j<>k (see Lohr (1999: p. 139). The average cluster size is used as the equal cluster size quantity in Equation 5.8 of Lohr (1999). If the clusters are perfectly homogeneous (total variation is all between-cluster variability), then ICC=1.

type = 2 is the adjusted r-square, an alternative quantity following Equation 5.10 in Lohr (1999). It is the relative amount of variability in the population explained by the cluster means, adjusted for the number of degrees of freedom. If the clusters are homogeneous, then the cluster means are highly variable relative to variation within clusters, and the r-square will be high.

type = 3 is calculated using one-way random effects models (Donner, 1986). The formula is

rho = (BMS-WMS)/(BMS+(m-1)*WMS)

where BMS is the mean square between clusters, WMS is the mean square within clusters and m is the adjusted mean cluster size for clusters with unequal sample size. All clusters with zero elementary units should be deleted before calculation. type = 3 can be used with binary data (Ridout et al. 1999)

If est=1, the boostrap mean (value), variance of the mean and 0.025 and 0.975 percentiles are outputted.

References

Donner, A. 1986. A review of inference procedures for the intraclass correlation coefficient in the one-way random effects model. International Statistical Review. 54: 67-82.

Lohr, S. L. Sampling: design and analysis. Duxbury Press,New York, NY. 494 p.

Ridout, M. S., C. G. B. Demetrio, and D. Firth. 1999. Estimating intraclass correlation for binary data. Biometrics 55: 137-148.

See Also

clus.lf clus.str.lf clus.mean

Examples

Run this code
# NOT RUN {
  data(codcluslen)
  tem<-codcluslen[codcluslen[,1]=="NorthCape" & codcluslen[,3]>0,]
  outs<-data.frame(tow=NA,len=NA)
  cnt<-0
  for(i in 1:as.numeric(length(tem$number))){
    for(j in 1:tem$number[i]){
     cnt<-cnt+1
     outs[cnt,1]<-tem$tow[i]
     outs[cnt,2]<-tem$length[i]
   }
 }
 clus.rho(popchar=outs$len,cluster=outs$tow)
# }

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