The Normal Distribution
Normal Distribution definition
Parameters of the Normal Distribution
Normal Distribution Graphs with different parameters (means and variances)
Normal Distribution Graphs with different parameters (means and variances) (contd.)
σ and µ in Normal Distribution Graph
Every normal curve (regardless of its mean or standard deviation) conforms to the following “rule“:
The Standard Normal Distribution
Parameters of a Standard Normal Distribution
Definition
The normal distribution with parameter values µ = 0 and σ = 1 is called the standard normal distribution.
A random variable having a standard normal distribution is called a standard normal random variable and will be denoted by Z.
The pdf of Z is:
Example 13
(see powerpoint slides 13-19)
Example 14: 99th Percentile
Here .9901 lies at the intersection of the row marked 2.3 and column marked .03, so the 99th percentile is (approximately) z = 2.33.

Percentiles of the Standard Normal Distribution
za Notation for z Critical Values
In statistical inference, we will need the values on the horizontal z-axis that capture certain small tail areas under the standard normal curve.
Notation
za will denote the value on the z-axis for which a (alpha) of the area under the z curve lies to the right of za.
(See Figure 4.19.)
For example, z.10 captures upper-tail area .10, and z.01 captures upper-tail area .01.
Since a (alpha) of the area under the z curve lies to the right of za, 1 – a of the area lies to its left. Thus za is the 100(1 – a)th percentile of the standard normal distribution.
By symmetry, the area under the standard normal curve to the left of –za is also a. The za’s are usually referred to as z critical values.

Most Useful z percentiles and za values

Example 15
Non-standard Normal Distributions
Non-standard Normal Distributions (contd.)
Non-standard Normal Distributions (contd. part 2)
The key idea of the proposition is that by standardizing, any
probability involving X can be expressed as a probability involving a standard normal rv Z, so that Appendix Table A.3 can be used.
This is illustrated in Figure 4.21.

Example 16
What is the probability that reaction time is between 1.00 sec and 1.75 sec?
Example 16 contd.
Percentiles of an Arbitrary Normal Distribution
Example 18
The amount of distilled water dispensed by a certain machine is normally distributed with mean value 64 oz and standard deviation .78 oz.
What container size c will ensure that overflow occurs only .5% of the time? If X denotes the amount dispensed, the desired condition is that P(X > c) = .005, or, equivalently, that P(X <= c) = .995.
Thus c is the 99.5th percentile of the normal distribution with µ = 64 and σ = .78.
Example 18 contd.
The Normal Distribution and Discrete Populations