dCorrBin function

Correlated Binomial Distribution

Correlated Binomial Distribution

These functions provide the ability for generating probability function values and cumulative probability function values for the Correlated Binomial Distribution.

dCorrBin(x,n,p,cov)

Arguments

  • x: vector of binomial random variables.
  • n: single value for no of binomial trials.
  • p: single value for probability of success.
  • cov: single value for covariance.

Returns

The output of dCorrBin gives a list format consisting

pdf probability function values in vector form.

mean mean of Correlated Binomial Distribution.

var variance of Correlated Binomial Distribution.

corr correlation of Correlated Binomial Distribution.

mincorr minimum correlation value possible.

maxcorr maximum correlation value possible.

Details

The probability function and cumulative function can be constructed and are denoted below

The cumulative probability function is the summation of probability function values.

PCorrBin(x)=(nx)(px)(1p)nx(1+(cov2p2(1p)2)((xnp)2+x(2p1)np2)) P_{CorrBin}(x) = {n \choose x}(p^x)(1-p)^{n-x}(1+(\frac{cov}{2p^2(1-p)^2})((x-np)^2+x(2p-1)-np^2)) x=0,1,2,3,...n x = 0,1,2,3,...n n=1,2,3,... n = 1,2,3,... 0<p<1 0 < p < 1 <cov<+ -\infty < cov < +\infty

The Correlation is in between

2n(n1)min(p1p,1pp)correlation2p(1p)(n1)p(1p)+0.25fo \frac{-2}{n(n-1)} min(\frac{p}{1-p},\frac{1-p}{p}) \le correlation \le \frac{2p(1-p)}{(n-1)p(1-p)+0.25-fo}

where fo=min[(x(n1)p0.5)2]fo=min [(x-(n-1)p-0.5)^2]

The mean and the variance are denoted as

ECorrBin[x]=np E_{CorrBin}[x]= np VarCorrBin[x]=n(p(1p)+(n1)cov) Var_{CorrBin}[x]= n(p(1-p)+(n-1)cov) CorrCorrBin[x]=covp(1p) Corr_{CorrBin}[x]=\frac{cov}{p(1-p)}

NOTE : If input parameters are not in given domain conditions necessary error messages will be provided to go further.

Examples

#plotting the random variables and probability values col <- rainbow(5) a <- c(0.58,0.59,0.6,0.61,0.62) b <- c(0.022,0.023,0.024,0.025,0.026) plot(0,0,main="Correlated binomial probability function graph",xlab="Binomial random variable", ylab="Probability function values",xlim = c(0,10),ylim = c(0,0.5)) for (i in 1:5) { lines(0:10,dCorrBin(0:10,10,a[i],b[i])$pdf,col = col[i],lwd=2.85) points(0:10,dCorrBin(0:10,10,a[i],b[i])$pdf,col = col[i],pch=16) } dCorrBin(0:10,10,0.58,0.022)$pdf #extracting the pdf values dCorrBin(0:10,10,0.58,0.022)$mean #extracting the mean dCorrBin(0:10,10,0.58,0.022)$var #extracting the variance dCorrBin(0:10,10,0.58,0.022)$corr #extracting the correlation dCorrBin(0:10,10,0.58,0.022)$mincorr #extracting the minimum correlation value dCorrBin(0:10,10,0.58,0.022)$maxcorr #extracting the maximum correlation value #plotting the random variables and cumulative probability values col <- rainbow(5) a <- c(0.58,0.59,0.6,0.61,0.62) b <- c(0.022,0.023,0.024,0.025,0.026) plot(0,0,main="Correlated binomial probability function graph",xlab="Binomial random variable", ylab="Probability function values",xlim = c(0,10),ylim = c(0,1)) for (i in 1:5) { lines(0:10,pCorrBin(0:10,10,a[i],b[i]),col = col[i],lwd=2.85) points(0:10,pCorrBin(0:10,10,a[i],b[i]),col = col[i],pch=16) } pCorrBin(0:10,10,0.58,0.022) #acquiring the cumulative probability values

References

\insertRef johnson2005univariatefitODBOD

\insertRef kupper1978usefitODBOD

\insertRef paul1985threefitODBOD

\insertRef morel2012overdispersionfitODBOD