Normal distribution | Properties, proofs, exercises (2024)

by Marco Taboga, PhD

The normal distribution is a continuous probability distribution that plays a central role in probability theory and statistics.

It is often called Gaussian distribution, in honor of Carl Friedrich Gauss (1777-1855), an eminent German mathematician who gave important contributions towards a better understanding of the normal distribution.

Normal distribution | Properties, proofs, exercises (1)

Table of contents

  1. Why is it so important?

  2. Main characteristics

  3. The standard normal distribution

    1. Definition

    2. Expected value

    3. Variance

    4. Moment generating function

    5. Characteristic function

    6. Distribution function

  4. The normal distribution in general

    1. Definition

    2. Relation between standard and non-standard normal distribution

    3. Expected value

    4. Variance

    5. Moment generating function

    6. Characteristic function

    7. Distribution function

  5. Density plots

    1. Plot 1 - Changing the mean

    2. Plot 2 - Changing the standard deviation

  6. More details

  7. Solved exercises

    1. Exercise 1

    2. Exercise 2

    3. Exercise 3

Why is it so important?

The normal distribution is extremely important because:

  • many real-world phenomena involve random quantities that are approximately normal (e.g., errors in scientific measurement);

  • it plays a crucial role in the Central Limit Theorem, one of the fundamental results in statistics;

  • its great analytical tractability makes it very popular in statistical modelling.

Main characteristics

Sometimes it is also referred to as "bell-shaped distribution" because the graph of its probability density function resembles the shape of a bell.

Normal distribution | Properties, proofs, exercises (2)

As you can see from the above plot, the density of a normal distribution has two main characteristics:

  • it is symmetric around the mean (indicated by the vertical line); as a consequence, deviations from the mean having the same magnitude, but different signs, have the same probability;

  • it is concentrated around the mean; it becomes smaller by moving from the center to the left or to the right of the distribution (the so called "tails" of the distribution); this means that the further a value is from the center of the distribution, the less probable it is to observe that value.

The remainder of this lecture gives a formal presentation of the main characteristics of the normal distribution.

First, we deal with the special case in which the distribution has zero mean and unit variance. Then, we present the general case, in which mean and variance can take any value.

The standard normal distribution

The adjective "standard" indicates the special case in which the mean is equal to zero and the variance is equal to one.

Definition

Standard normal random variables are characterized as follows.

Definition Let Normal distribution | Properties, proofs, exercises (3) be a continuous random variable. Let its support be the whole set of real numbers:Normal distribution | Properties, proofs, exercises (4)We say that Normal distribution | Properties, proofs, exercises (5) has a standard normal distribution if and only if its probability density function isNormal distribution | Properties, proofs, exercises (6)

The following is a proof that Normal distribution | Properties, proofs, exercises (7) is indeed a legitimate probability density function:

Proof

The function Normal distribution | Properties, proofs, exercises (8) is a legitimate probability density function if it is non-negative and if its integral over the support equals 1. The former property is obvious, while the latter can be proved as follows:Normal distribution | Properties, proofs, exercises (9)

Expected value

The expected value of a standard normal random variable Normal distribution | Properties, proofs, exercises (10) isNormal distribution | Properties, proofs, exercises (11)

Proof

It can be derived as follows:Normal distribution | Properties, proofs, exercises (12)

Variance

The variance of a standard normal random variable Normal distribution | Properties, proofs, exercises (13) isNormal distribution | Properties, proofs, exercises (14)

Proof

It can be proved with the usual variance formula (Normal distribution | Properties, proofs, exercises (15)):Normal distribution | Properties, proofs, exercises (16)

Moment generating function

The moment generating function of a standard normal random variable Normal distribution | Properties, proofs, exercises (17) is defined for any Normal distribution | Properties, proofs, exercises (18):Normal distribution | Properties, proofs, exercises (19)

Proof

It is derived by using the definition of moment generating function:Normal distribution | Properties, proofs, exercises (20)The integral above is well-defined and finite for any Normal distribution | Properties, proofs, exercises (21). Thus, the moment generating function of Normal distribution | Properties, proofs, exercises (22) exists for any Normal distribution | Properties, proofs, exercises (23).

Characteristic function

The characteristic function of a standard normal random variable Normal distribution | Properties, proofs, exercises (24) isNormal distribution | Properties, proofs, exercises (25)

Proof

By the definition of characteristic function, we haveNormal distribution | Properties, proofs, exercises (26)Now, take the derivative with respect to Normal distribution | Properties, proofs, exercises (27) of the characteristic function:Normal distribution | Properties, proofs, exercises (28)By putting together the previous two results, we obtainNormal distribution | Properties, proofs, exercises (29)The only function that satisfies this ordinary differential equation (subject to the condition Normal distribution | Properties, proofs, exercises (30)) isNormal distribution | Properties, proofs, exercises (31)

Distribution function

There is no simple formula for the distribution function Normal distribution | Properties, proofs, exercises (32) of a standard normal random variable Normal distribution | Properties, proofs, exercises (33) because the integralNormal distribution | Properties, proofs, exercises (34)cannot be expressed in terms of elementary functions. Therefore, it is usually necessary to resort to special tables or computer algorithms to compute the values of Normal distribution | Properties, proofs, exercises (35). The lecture entitled Normal distribution values discusses these alternatives in detail.

The normal distribution in general

While in the previous section we restricted our attention to the special case of zero mean and unit variance, we now deal with the general case.

Definition

The normal distribution with mean Normal distribution | Properties, proofs, exercises (36) and variance Normal distribution | Properties, proofs, exercises (37) is characterized as follows.

Definition Let Normal distribution | Properties, proofs, exercises (38) be a continuous random variable. Let its support be the whole set of real numbers:Normal distribution | Properties, proofs, exercises (39)Let Normal distribution | Properties, proofs, exercises (40) and Normal distribution | Properties, proofs, exercises (41). We say that Normal distribution | Properties, proofs, exercises (42) has a normal distribution with mean Normal distribution | Properties, proofs, exercises (43) and variance Normal distribution | Properties, proofs, exercises (44) if and only if its probability density function isNormal distribution | Properties, proofs, exercises (45)

We often indicate the fact that Normal distribution | Properties, proofs, exercises (46) has a normal distribution with mean Normal distribution | Properties, proofs, exercises (47) and variance Normal distribution | Properties, proofs, exercises (48) byNormal distribution | Properties, proofs, exercises (49)

To better understand how the shape of the distribution depends on its parameters, you can have a look at the density plots at the bottom of this page.

Relation between standard and non-standard normal distribution

The following proposition provides the link between the standard and the general case.

Proposition If Normal distribution | Properties, proofs, exercises (50) has a normal distribution with mean Normal distribution | Properties, proofs, exercises (51) and variance Normal distribution | Properties, proofs, exercises (52), thenNormal distribution | Properties, proofs, exercises (53)where Normal distribution | Properties, proofs, exercises (54) is a random variable having a standard normal distribution.

Proof

This can be easily proved using the formula for the density of a function of a continuous variable (Normal distribution | Properties, proofs, exercises (55) is a strictly increasing function of Normal distribution | Properties, proofs, exercises (56), since Normal distribution | Properties, proofs, exercises (57) is strictly positive):Normal distribution | Properties, proofs, exercises (58)

Thus, a normal distribution is standard when Normal distribution | Properties, proofs, exercises (59) and Normal distribution | Properties, proofs, exercises (60).

Expected value

The expected value of a normal random variable Normal distribution | Properties, proofs, exercises (61) isNormal distribution | Properties, proofs, exercises (62)

Proof

The proof is a straightforward application of the fact that Normal distribution | Properties, proofs, exercises (63) can we written as a linear function of a standard normal variable:Normal distribution | Properties, proofs, exercises (64)

Variance

The variance of a normal random variable Normal distribution | Properties, proofs, exercises (65) isNormal distribution | Properties, proofs, exercises (66)

Proof

It can be derived as follows:Normal distribution | Properties, proofs, exercises (67)

Moment generating function

The moment generating function of a normal random variable Normal distribution | Properties, proofs, exercises (68) is defined for any Normal distribution | Properties, proofs, exercises (69):Normal distribution | Properties, proofs, exercises (70)

Proof

The mgf is derived as follows:Normal distribution | Properties, proofs, exercises (71)It is defined for any Normal distribution | Properties, proofs, exercises (72) because the moment generating function of Normal distribution | Properties, proofs, exercises (73) is defined for any Normal distribution | Properties, proofs, exercises (74).

Characteristic function

The characteristic function of a normal random variable Normal distribution | Properties, proofs, exercises (75) isNormal distribution | Properties, proofs, exercises (76)

Proof

The derivation is similar to the derivation of the moment generating function:Normal distribution | Properties, proofs, exercises (77)

Distribution function

The distribution function Normal distribution | Properties, proofs, exercises (78) of a normal random variable Normal distribution | Properties, proofs, exercises (79) can be written asNormal distribution | Properties, proofs, exercises (80)where Normal distribution | Properties, proofs, exercises (81) is the distribution function of a standard normal random variable Normal distribution | Properties, proofs, exercises (82) (see above). The lecture entitled Normal distribution values provides a proof of this formula and discusses it in detail.

Density plots

This section shows the plots of the densities of some normal random variables. These plots help us to understand how the shape of the distribution changes by changing its parameters.

Plot 1 - Changing the mean

The following plot contains the graphs of two normal probability density functions:

  • the first graph (red line) is the probability density function of a normal random variable with mean Normal distribution | Properties, proofs, exercises (83) and standard deviation Normal distribution | Properties, proofs, exercises (84);

  • the second graph (blue line) is the probability density function of a normal random variable with mean Normal distribution | Properties, proofs, exercises (85) and standard deviation Normal distribution | Properties, proofs, exercises (86).

By changing the mean from Normal distribution | Properties, proofs, exercises (87) to Normal distribution | Properties, proofs, exercises (88), the shape of the graph does not change, but the graph is translated to the right (its location changes).

Normal distribution | Properties, proofs, exercises (89)

Plot 2 - Changing the standard deviation

The following plot shows two graphs:

  • the first graph (red line) is the probability density function of a normal random variable with mean Normal distribution | Properties, proofs, exercises (90) and standard deviation Normal distribution | Properties, proofs, exercises (91);

  • the second graph (blue line) is the probability density function of a normal random variable with mean Normal distribution | Properties, proofs, exercises (92) and standard deviation Normal distribution | Properties, proofs, exercises (93).

By increasing the standard deviation from Normal distribution | Properties, proofs, exercises (94) to Normal distribution | Properties, proofs, exercises (95), the location of the graph does not change (it remains centered at Normal distribution | Properties, proofs, exercises (96)), but the shape of the graph changes (there is less density in the center and more density in the tails).

Normal distribution | Properties, proofs, exercises (97)

More details

The following lectures contain more material about the normal distribution.

Normal distribution values

How to tackle the numerical computation of the distribution function

Multivariate normal distribution

A multivariate generalization of the normal distribution, frequently encountered in statistics

Quadratic forms involving normal variables

Discusses the distribution of quadratic forms involving normal random variables

Linear combinations of normal variables

Discusses the important fact that normality is preserved by linear combinations

Solved exercises

Below you can find some exercises with explained solutions.

Exercise 1

Let Normal distribution | Properties, proofs, exercises (98) be a normal random variable with mean Normal distribution | Properties, proofs, exercises (99) and variance Normal distribution | Properties, proofs, exercises (100). Compute the following probability:Normal distribution | Properties, proofs, exercises (101)

Solution

First of all, we need to express the above probability in terms of the distribution function of Normal distribution | Properties, proofs, exercises (102):Normal distribution | Properties, proofs, exercises (103)

Then, we need to express the distribution function of Normal distribution | Properties, proofs, exercises (104) in terms of the distribution function of a standard normal random variable Normal distribution | Properties, proofs, exercises (105):Normal distribution | Properties, proofs, exercises (106)

Therefore, the above probability can be expressed asNormal distribution | Properties, proofs, exercises (107)where we have used the fact that Normal distribution | Properties, proofs, exercises (108), which has been presented in the lecture entitled Normal distribution values.

Exercise 2

Let Normal distribution | Properties, proofs, exercises (109) be a random variable having a normal distribution with mean Normal distribution | Properties, proofs, exercises (110) and variance Normal distribution | Properties, proofs, exercises (111). Compute the following probability:Normal distribution | Properties, proofs, exercises (112)

Solution

We need to use the same technique used in the previous exercise (express the probability in terms of the distribution function of a standard normal random variable):Normal distribution | Properties, proofs, exercises (113)where we have found the value Normal distribution | Properties, proofs, exercises (114) in a normal distribution table.

Exercise 3

Suppose the random variable Normal distribution | Properties, proofs, exercises (115) has a normal distribution with mean Normal distribution | Properties, proofs, exercises (116) and variance Normal distribution | Properties, proofs, exercises (117). Define the random variable Normal distribution | Properties, proofs, exercises (118) as follows:Normal distribution | Properties, proofs, exercises (119)Compute the expected value of Normal distribution | Properties, proofs, exercises (120).

Solution

Remember that the moment generating function of Normal distribution | Properties, proofs, exercises (121) isNormal distribution | Properties, proofs, exercises (122)Therefore, using the linearity of the expected value, we obtainNormal distribution | Properties, proofs, exercises (123)

How to cite

Please cite as:

Taboga, Marco (2021). "Normal distribution", Lectures on probability theory and mathematical statistics. Kindle Direct Publishing. Online appendix. https://www.statlect.com/probability-distributions/normal-distribution.

Normal distribution | Properties, proofs, exercises (2024)

FAQs

What are the properties and symmetry of the normal distribution? ›

Properties of Normal Distribution

In a normal distribution, mean (average), median (midpoint), and mode (most frequent observation) are equal. These values represent the peak or highest point. The distribution then falls symmetrically around the mean, the width of which is defined by the standard deviation.

What are the theoretical properties of the normal distribution? ›

Normal distributions have key characteristics that are easy to spot in graphs: The mean, median and mode are exactly the same. The distribution is symmetric about the mean—half the values fall below the mean and half above the mean. The distribution can be described by two values: the mean and the standard deviation.

How to prove that distribution is normal? ›

The most common graphical tool for assessing normality is the Q-Q plot. In these plots, the observed data is plotted against the expected quantiles of a normal distribution. It takes practice to read these plots. In theory, sampled data from a normal distribution would fall along the dotted line.

What is the shape of the probability density function for the standard normal distribution? ›

The density function of a normal probability distribution is bell shaped and symmetric about the mean.

What are the 4 properties of the normal distribution? ›

Here, we see the four characteristics of a normal distribution. Normal distributions are symmetric, unimodal, and asymptotic, and the mean, median, and mode are all equal. A normal distribution is perfectly symmetrical around its center.

What are the three main properties of distribution? ›

There are three basic properties of a distribution: location, spread, and shape. The location refers to the typical value of the distribution, such as the mean.

What properties must be true of a normal distribution? ›

A normal distribution has some interesting properties: it has a bell shape, the mean and median are equal, and 68% of the data falls within 1 standard deviation.

What are the 5 critical properties of a normal distribution? ›

Answer:
  • The total area of normal curve is 1. ...
  • No portion of curve lies below x-axis so probability can never be negative.
  • The curve becomes parallel to x-axis which is supposed to meet it at infinity.
  • Here mean deviation = 4/5 standard deviation.
  • Quartile deviation = 5/6 mean deviation.
Apr 26, 2021

Can normal distribution be skewed? ›

Skewness is the degree of asymmetry observed in a probability distribution. Distributions can be positive and right-skewed, or negative and left-skewed. A normal distribution exhibits zero skewness.

What is the empirical rule of the normal distribution? ›

The empirical rule states that in a normal distribution, virtually all observed data will fall within three standard deviations of the mean. Under this rule, 68% of the data will fall within one standard deviation, 95% within two standard deviations, and 99.7% within three standard deviations from the mean.

What is a real life example of a normal distribution? ›

What are some real life examples of normal distributions? In a normal distribution, half the data will be above the mean and half will be below the mean. Examples of normal distributions include standardized test scores, people's heights, IQ scores, incomes, and shoe size.

What is the best way to test for normal distribution? ›

To test your data analytically for normal distribution, there are several test procedures, the best known being the Kolmogorov-Smirnov test, the Shapiro-Wilk test, and the Anderson Darling test. In all of these tests, you are testing the null hypothesis that your data are normally distributed.

How many parameters are needed to fully describe any normal distribution? ›

Two parameters are needed to describe any normal distribution fully. These are the average, μ, and the standard deviation, σ.

What is the mathematical equation for the normal distribution? ›

What is the normal distribution formula? For a random variable x, with mean “μ” and standard deviation “σ”, the normal distribution formula is given by: f(x) = (1/√(2πσ2)) (e[-(x-μ)^2]/^2).

How to solve the probabilities of a normal distribution? ›

To solve these types of problems, you simply need to work out each separate area under the standard normal distribution curve and then add the probabilities together. This will give you the total probability.

What are the properties of a symmetric distribution? ›

Properties of Symmetric Distributions

In a symmetrical distribution, the mean, median, and mode are all equal. Remember the meanings of each of the following terms: Mean: This is the average of the values. Median: The value in the midway.

What are the properties of symmetry? ›

The symmetric property of equality is a simple property that says we can interchange the sides of an equation without changing the truth-value of the equation. That is, if a = b, then b = a. Each side of the equation can be thought of as the mirror image of the other side.

What is a normal and symmetric distribution? ›

In a symmetrical distribution the two sides of the distribution are a mirror image of each other. A normal distribution is a true symmetric distribution of observed values.

What are the symmetry elements of normal class? ›

Note
Symbol ElementsDescriptionSymbol
Eidentityno change
Cnn-fold axis of rotationRotation by 360°/n leaves the molecule unchanged
σplane of symmetryReflection in the plane leaves the molecule unchanged
icenter of symmetry.Inversion through the center of symmetry leaves the molecule unchanged.
1 more row
Jun 30, 2023

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