The Normal Distribution (DP IB Applications & Interpretation (AI)): Revision Note
Did this video help you?
Properties of normal distribution
The binomial distribution is an example of a discrete probability distribution. The normal distribution is an example of a continuous probability distribution.
What is a continuous random variable?
- A continuous random variable (often abbreviated to CRV) is a random variable that can take any value within a range of infinitely many values - Continuous random variables usually measure something 
- For example, height, weight, time, etc 
 
What is a continuous probability distribution?
- A continuous probability distribution is a probability distribution in which the random variable - is continuous 
- The probability of - being a particular value is always zero - for any value k 
 
- Instead we define the probability density function - for a specific value - This is a function that describes the relative likelihood that the random variable would be close to that value 
- We talk about the probability of - being within a certain range 
 
- A continuous probability distribution can be represented by a continuous graph of its probability density function - The values for - are along the horizontal axis, and probability density on the vertical axis 
 
- The area under the graph between the points - and - is equal to - The total area under the graph equals 1 
 
- As - for any value k, it does not matter if we use strict or weak inequalities - for any value k when X is a continuous random variable 
 
What is a normal distribution?
- A normal distribution is a type of continuous probability distribution 
- The continuous random variable - can follow a normal distribution if: - The distribution is symmetrical 
- The distribution is bell-shaped 
 
- If - follows a normal distribution then it is denoted - means "is distributed as" or "has the distribution" 
- indicates the normal distribution 
- μ is the mean 
- σ2 is the variance - σ is the standard deviation 
 
 
- If the mean changes then the graph is translated horizontally 
- If the variance increases then the graph is widened horizontally and made shorter vertically to maintain the same area - A small variance leads to a tall curve with a narrow centre 
- A large variance leads to a short curve with a wide centre 
 

What are the important properties of a normal distribution?
- The mean is μ 
- The variance is σ2 - If you need the standard deviation - remember to take the square root of this 
 
- The normal distribution is symmetrical about - Mean = Median = Mode = μ 
 
- You should be familiar with these results: - Approximately two-thirds (68%) of the data lies within one standard deviation of the mean (μ ± σ) 
- Approximately 95% of the data lies within two standard deviations of the mean (μ ± 2σ) 
- Nearly all of the data (99.7%) lies within three standard deviations of the mean (μ ± 3σ) 
 

Did this video help you?
Modelling with normal distribution
What can be modelled using a normal distribution?
- A lot of real-life continuous variables can be modelled by a normal distribution - provided that the population is large enough 
- and that the variable is symmetrical with one mode 
 
- For a normal distribution - can take any real value - However values far from the mean (more than 4 standard deviations away from the mean) have a probability density of practically zero 
- This fact allows us to model variables that are not defined for all real values such as height and weight 
 
What cannot be modelled using a normal distribution?
- Variables which have more than one mode or no mode - For example: the number given by a random number generator 
 
- Variables which are not symmetrical - For example: how long a human lives for 
 
Examiner Tips and Tricks
An exam question might involve different types of distributions, so make it clear which distribution is being used for each variable.
Worked Example
The random variable  represents the speeds (mph) of a certain subspecies of cheetahs when they run. The variable is modelled using 
.
a) Write down the mean and standard deviation of the running speeds of these cheetahs.

b) State two assumptions that have been made in order to use this model.

Unlock more, it's free!
Did this page help you?

