Difference between revisions of "Beta distributions"

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Beta distributions have many [http://en.wikipedia.org/wiki/Beta_distribution#Shapes shapes] depending on the parameters. Their flexibility makes them useful for modelling  
 
Beta distributions have many [http://en.wikipedia.org/wiki/Beta_distribution#Shapes shapes] depending on the parameters. Their flexibility makes them useful for modelling  
uniform distributions &Beta(1,1) right through to symmetric or skewed distributions, or even U shaped distributions.
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uniform distributions Β(1,1) right through to symmetric or skewed distributions, or even U shaped distributions.
  
 
==R programming language==
 
==R programming language==

Revision as of 21:33, 2 August 2006

Beta distributions

For details on the beta distribution see WikiPedia:Beta distribution. Notice that thee distribution is symmetric for the parameters p, and q (α & β in the Wikipedia article formula), and that the x axis range is from 0 to 1, a probability.

Beta distributions have many shapes depending on the parameters. Their flexibility makes them useful for modelling uniform distributions Β(1,1) right through to symmetric or skewed distributions, or even U shaped distributions.

R programming language

For help on functions which create/manipulate beta distributions see;

?beta # or help(beta)
?rbeta # or help(rbeta)

Usage examples are provided at;

example(beta)
example(rbeta)
example(dbeta)
example(pbeta)
example(qbeta)

R code example 1

Lets generate a beta distribution using the rbeta built in R function.

quartz()
# Alter the parameters
n <- 1000 # Number of observations
p <- 0.1   
q <- 0.1
x <- rbeta(n, shape1= p, shape2=q)
breaks <- seq(0,1, length=21)
hist(x, breaks=breaks, freq=FALSE, main=paste("p=",p, ", q=", q, sep="")) lines(density(x, adjust=0.4), col="red")

Notice α and β are less than one, so the plot is U shaped, as described in Wikipedia:Beta_distribution#Shapes.

Symmetry of α Β

R code example 2

quartz()
# Alter the parameters
n <- 10000 # Number of observations
for(i in 1:50) {
p <- q <- i
x <- rbeta(n, shape1= p, shape2=q)
breaks <- seq(0,1, length=21)
hist(x, breaks=breaks, freq=FALSE, main=paste("p=",p, ", q=", q, sep=""))
lines(density(x, adjust=0.4), col="red")
Sys.sleep(1)
}

See also

BetaDistributions.R