Binomial cumulative distribution function
computes a binomial cumulative distribution function at each of the values in
y
= binocdf(x
,n
,p
)x
using the corresponding number of trials in n
and the probability of success for each trial in p
.
x
, n
, and p
can be
vectors, matrices, or multidimensional arrays of the same size. Alternatively, one or more
arguments can be scalars. The binocdf
function expands scalar inputs to
constant arrays with the same dimensions as the other inputs.
binocdf
is a function specific to binomial distribution.
Statistics and Machine Learning Toolbox™ also offers the generic function cdf
, which supports various probability distributions. To use cdf
, specify the probability distribution name and its parameters.
Alternatively, create a BinomialDistribution
probability distribution
object and pass the object as an input argument. Note that the distribution-specific
function binocdf
is faster than the generic function cdf
.
Use the Probability Distribution Function app to create an interactive plot of the cumulative distribution function (cdf) or probability density function (pdf) for a probability distribution.