CHAPTER 24 Ten Distributions Worth Knowing 355
The arc-sine of the square root of a set of proportions is approximately normally
distributed, with a standard deviation of 1
4
/
N . Using this transformation, you
can analyze data consisting of observed proportions with t tests, ANOVAs, regres-
sion models, and other methods designed for normally distributed data. For
example, using this transformation, you could use these methods to statistically
compare proportions of participants who responded to treatment in two different
treatment groups in a study. However, whenever you transform your data, it can
be challenging to back-transform the results and interpret them.
The Poisson Distribution
The Poisson distribution gives the probability of observing exactly N independent
random events in some interval of time or region of space if the mean event rate
is m. The Poisson distribution describes fluctuations of random event occurrences
seen in biology, such as the number of nuclear decay counts per minute, or the
number of pollen grains per square centimeter on a microscope slide. Figure 24-5
shows the Poisson distribution for three different values of m.
The
formula
to
estimate
probabilities
on
the
Poisson
distribution
is Pr
,
/
(N m
m e
N
N
m
)
.
Looking across Figure 24-5, you might have guessed that as m gets larger, the
Poisson distribution’s shape approaches that of a normal distribution, with
mean m and standard deviation
m.
The square roots of a set of Poisson-distributed numbers are approximately nor-
mally distributed, with a standard deviation of 0.5.
FIGURE 24-5:
The Poisson
distribution.
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