Probability distribution

Lecture



The probability distribution is a law that describes the range of values ​​of a random variable and the probability of their outcome (appearance).

Content

  • 1 Definition
  • 2 Ways to assign distributions
    • 2.1 Discrete Distributions
    • 2.2 Continuous Distributions
    • 2.3 Absolutely continuous distributions
  • 3 Notes

Definition [edit]

Definition 1. Let probability space be given   Probability distribution and a random variable is defined on it   Probability distribution . In particular, by definition,   Probability distribution is a measurable mapping of measurable space   Probability distribution in a measurable space   Probability distribution where   Probability distribution denotes a Borel sigma-algebra on   Probability distribution . Then a random variable   Probability distribution induces a probability measure   Probability distribution on   Probability distribution in the following way:

  Probability distribution

Measure   Probability distribution called a random variable distribution   Probability distribution . In other words,   Probability distribution , in this way   Probability distribution sets the probability that a random variable   Probability distribution falls into the set   Probability distribution .

Ways to assign distributions [edit]

Definition 2. Function   Probability distribution is called the (cumulative) distribution function of a random variable   Probability distribution . From the properties of probability follows

Theorem 1. The distribution function   Probability distribution any random variable satisfies the following three properties:

  1.   Probability distribution - non-decreasing function;
  2.   Probability distribution ;
  3.   Probability distribution continuous on the right.

From the fact that a Borel sigma-algebra on a real line is generated by a family of intervals of the form   Probability distribution implies

Theorem 2. Any function   Probability distribution satisfying the three properties listed above is a distribution function for some distribution   Probability distribution .

For probability distributions with certain properties, there are more convenient ways to set it.

Discrete distributions [edit]

Definition 3. A random variable is called simple or discrete if it takes no more than a countable number of values. I.e   Probability distribution where   Probability distribution - splitting   Probability distribution .

The distribution of a simple random variable is then defined by definition:   Probability distribution . Enter the designation   Probability distribution can set function   Probability distribution . It's obvious that   Probability distribution . Using countable additivity   Probability distribution it is easy to show that this function uniquely determines the distribution   Probability distribution .

Definition 4. Function   Probability distribution where   Probability distribution often referred to as a discrete distribution .

Example 1. Let function   Probability distribution set in such a way that   Probability distribution and   Probability distribution . This function sets the distribution of the random variable.   Probability distribution , for which   Probability distribution (Bernoulli distribution).

Theorem 3. Discrete distribution has the following properties:

one.   Probability distribution ;

2   Probability distribution .

Continuous Distributions [edit]

A continuous distribution is a distribution that does not have atoms.

Absolutely continuous distributions [edit]

Absolutely continuous are the distributions having a probability density. The cumulative function of such distributions is absolutely continuous in the sense of Lebesgue.

Definition 5. The distribution of a random variable.   Probability distribution called absolutely continuous if there is a non-negative function   Probability distribution such that   Probability distribution . Function   Probability distribution then called the distribution density of a random variable   Probability distribution .

Example 2. Let   Probability distribution when   Probability distribution and   Probability distribution - otherwise. Then   Probability distribution , if a   Probability distribution .

Obviously, for any density distribution   Probability distribution true equality   Probability distribution . True and reverse

Theorem 4. If the function   Probability distribution such that:

  1.   Probability distribution ;
  2.   Probability distribution ,

then there is a distribution   Probability distribution such that   Probability distribution is its density.

Simply applying the Newton-Leibniz formula leads to a simple relationship between the cumulative function and the density of an absolutely continuous distribution.

Theorem 5. If   Probability distribution - continuous distribution density, and   Probability distribution - its cumulative function, then

  1.   Probability distribution
  2.   Probability distribution .
created: 2015-01-17
updated: 2021-01-10
132524



Rating 9 of 10. count vote: 2
Are you satisfied?:



Comments


To leave a comment
If you have any suggestion, idea, thanks or comment, feel free to write. We really value feedback and are glad to hear your opinion.
To reply

Probability theory. Mathematical Statistics and Stochastic Analysis

Terms: Probability theory. Mathematical Statistics and Stochastic Analysis