The random variable X has Cumulative Distribution Function F
Solution
baf(x)dx=Pr[aXb]
For a discrete distribution, the pdf is the probability that the variate takes the value x.
f(x)=Pr[X=x]
The cumulative distribution function (cdf) is the probability that the variable takes a value less than or equal to x. That is
F(x)=Pr[Xx]=
For a continuous distribution, this can be expressed mathematically as
F(x)=xf()d
For a discrete distribution, the cdf can be expressed as
F(x)=xi=0f(i)
| Probability distributions are typically defined in terms of the probability density function. However, there are a number of probability functions used in applications. | |
| Probability Density Function | For a continuous function, the probability density function (pdf) is the probability that the variate has the value x. Since for continuous distributions the probability at a single point is zero, this is often expressed in terms of an integral between two points. baf(x)dx=Pr[aXb] For a discrete distribution, the pdf is the probability that the variate takes the value x. f(x)=Pr[X=x] The cumulative distribution function (cdf) is the probability that the variable takes a value less than or equal to x. That is F(x)=Pr[Xx]= For a continuous distribution, this can be expressed mathematically as F(x)=xf()d For a discrete distribution, the cdf can be expressed as F(x)=xi=0f(i) |
![The random variable X has Cumulative Distribution Function F_X (x) = {0, x Solutionbaf(x)dx=Pr[aXb] For a discrete distribution, the pdf is the probability tha The random variable X has Cumulative Distribution Function F_X (x) = {0, x Solutionbaf(x)dx=Pr[aXb] For a discrete distribution, the pdf is the probability tha](/WebImages/8/the-random-variable-x-has-cumulative-distribution-function-f-996766-1761513068-0.webp)