fitODBOD (version 1.4.1-1)

mazGAMMA: Gamma Distribution

Description

These functions provide the ability for generating probability density values, cumulative probability density values and moment about zero values for Gamma Distribution bounded between [0,1].

Usage

mazGAMMA(r,c,l)

Value

The output of mazGAMMA gives the moments about zero in vector form.

Arguments

r

vector of moments.

c

single value for shape parameter c.

l

single value for shape parameter l.

Details

The probability density function and cumulative density function of a unit bounded Gamma distribution with random variable P are given by

$$g_{P}(p) = \frac{ c^l p^{c-1}}{\gamma(l)} [ln(1/p)]^{l-1} $$ ; \(0 \le p \le 1\) $$G_{P}(p) = \frac{ Ig(l,cln(1/p))}{\gamma(l)} $$ ; \(0 \le p \le 1\) $$l,c > 0$$

The mean the variance are denoted by $$E[P] = (\frac{c}{c+1})^l $$ $$var[P] = (\frac{c}{c+2})^l - (\frac{c}{c+1})^{2l} $$

The moments about zero is denoted as $$E[P^r]=(\frac{c}{c+r})^l $$ \(r = 1,2,3,...\)

Defined as \(\gamma(l) \) is the gamma function. Defined as \(Ig(l,cln(1/p))= \int_0^{cln(1/p)} t^{l-1} e^{-t}dt \) is the Lower incomplete gamma function.

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

References

Olshen, A. C. Transformations of the Pearson Type III Distribution. Ann. Math. Statist. 9 (1938), no. 3, 176--200.

See Also

Examples

Run this code
#plotting the random variables and probability values
col <- rainbow(4)
a <- c(1,2,5,10)
plot(0,0,main="Probability density graph",xlab="Random variable",ylab="Probability density values",
xlim = c(0,1),ylim = c(0,4))
for (i in 1:4)
{
lines(seq(0,1,by=0.01),dGAMMA(seq(0,1,by=0.01),a[i],a[i])$pdf,col = col[i])
}

dGAMMA(seq(0,1,by=0.01),5,6)$pdf   #extracting the pdf values
dGAMMA(seq(0,1,by=0.01),5,6)$mean  #extracting the mean
dGAMMA(seq(0,1,by=0.01),5,6)$var   #extracting the variance

#plotting the random variables and cumulative probability values
col <- rainbow(4)
a <- c(1,2,5,10)
plot(0,0,main="Cumulative density graph",xlab="Random variable",ylab="Cumulative density values",
xlim = c(0,1),ylim = c(0,1))
for (i in 1:4)
{
lines(seq(0,1,by=0.01),pGAMMA(seq(0,1,by=0.01),a[i],a[i]),col = col[i])
}

pGAMMA(seq(0,1,by=0.01),5,6)   #acquiring the cumulative probability values
mazGAMMA(1.4,5,6)              #acquiring the moment about zero values
mazGAMMA(2,5,6)-mazGAMMA(1,5,6)^2 #acquiring the variance for a=5,b=6

#only the integer value of moments is taken here because moments cannot be decimal
mazGAMMA(1.9,5.5,6)

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